# Best Image Recognition Software - Page 3

*By [Bijou Barry](https://research.g2.com/insights/author/bijou-barry)*


Image recognition software, also known as computer vision, allows applications to understand and interpret images or videos, taking image data as input and providing outputs such as labels or bounding boxes, enabling capabilities including object recognition, facial recognition, logo detection, and scene reconstruction.

### Core Capabilities of Image Recognition Software

To qualify for inclusion in the Image Recognition category, a product must:

- Provide a deep learning algorithm specifically for image recognition
- Connect with image data pools to learn a specific solution or function
- Consume image data as an input and provide an output
- Provide image recognition capabilities to other applications, processes, or services

### Common Use Cases for Image Recognition Software

Data scientists and developers use image recognition software to add computer vision capabilities to applications and automate visual analysis tasks. Common use cases include:

- Training custom image recognition models for object detection, facial recognition, and explicit content detection
- Adding image or video recognition features to applications via machine learning libraries, APIs, or SDKs
- Enabling edge-based or on-device image processing for real-time recognition without cloud dependency

### How Image Recognition Software Differs from Other Tools

Image recognition software is distinct from related categories: [data science and machine learning platforms](https://www.g2.com/categories/data-science-and-machine-learning-platforms) provide broad ML capabilities and are not solely focused on image recognition, while [machine learning software](https://www.g2.com/categories/machine-learning) covers other ML capabilities such as recommendation engines and pattern recognition beyond visual data. Software designed specifically for recognizing text within images belongs to the [optical character recognition (OCR)](https://www.g2.com/categories/ocr) category.

### Insights from G2 on Image Recognition Software

Based on category trends on G2, API flexibility and accuracy of deep learning models stand out as standout capabilities. Faster integration of computer vision features into products stand out as a primary outcome of adoption.






## How Many Image Recognition Software Products Does G2 Track?
**Total Products under this Category:** 424

### Category Stats (Jun 2026)
- **Average Rating**: 4.45/5 (↑0.01 vs May 2026) The average rating of products in this category, based on all submitted ratings
- **Top Trending Product**: Claude (+0.96%) - Among all products in this category, Claude recorded the largest rating increase compared to last month
*Last updated: June 09, 2026*


## How Does G2 Rank Image Recognition Software Products?

**Why You Can Trust G2's Software Rankings:**

- 30 Analysts and Data Experts
- 1,700+ Authentic Reviews
- 424+ Products
- Unbiased Rankings

G2's software rankings are built on verified user reviews, rigorous moderation, and a consistent research methodology maintained by a team of analysts and data experts. Each product is measured using the same transparent criteria, with no paid placement or vendor influence. While reviews reflect real user experiences, which can be subjective, they offer valuable insight into how software performs in the hands of professionals. Together, these inputs power the G2 Score, a standardized way to compare tools within every category.


## Which Image Recognition Software Is Best for Your Use Case?

- **Leader:** [Roboflow](https://www.g2.com/products/roboflow/reviews)
- **Highest Performer:** [Kwikpic](https://www.g2.com/products/kwikpic/reviews)
- **Easiest to Use:** [Roboflow](https://www.g2.com/products/roboflow/reviews)
- **Top Trending:** [Google Cloud AutoML Vision](https://www.g2.com/products/google-cloud-automl-vision/reviews)
- **Best Free Software:** [Roboflow](https://www.g2.com/products/roboflow/reviews)


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---

## What Are the Top-Rated Image Recognition Software Products in 2026?
### 1. [ENVI Deep Learning](https://www.g2.com/products/envi-deep-learning/reviews)
Automate Analytics With Deep Learning For Faster, More Accurate Results The ENVI® Deep Learning module (formerly MEGA) removes the barriers to performing deep learning with geospatial data and is currently being used to solve problems in defense, disaster response, urban development, transportation and other industries.


**Average Rating:** 4.5/5.0
**Total Reviews:** 3
**How Do G2 Users Rate ENVI Deep Learning?**

- **Ease of Use:** 10.0/10 (Category avg: 8.8/10)

**Who Is the Company Behind ENVI Deep Learning?**

- **Seller:** [NV5 Global](https://www.g2.com/sellers/nv5-global)
- **Year Founded:** 1947
- **HQ Location:** Hollywood, Florida, United States
- **Twitter:** @NV5_inc (1,003 Twitter followers)
- **LinkedIn® Page:** https://www.linkedin.com/company/nv5/ (3,325 employees on LinkedIn®)
- **Ownership:** NASDAQ: NVEE

**Who Uses This Product?**
- **Company Size:** 67% Small-Business, 33% Mid-Market



#### What Are Recent G2 Reviews of ENVI Deep Learning?

**"[Review for MEGA](https://www.g2.com/survey_responses/envi-deep-learning-review-7133152)"**

**Rating:** 4.5/5.0 stars
*— Harsh V.*

[Read full review](https://www.g2.com/survey_responses/envi-deep-learning-review-7133152)

---

**"[Easy storage application](https://www.g2.com/survey_responses/envi-deep-learning-review-6958740)"**

**Rating:** 4.0/5.0 stars
*— Sergio R.*

[Read full review](https://www.g2.com/survey_responses/envi-deep-learning-review-6958740)

---


#### What Are G2 Users Discussing About ENVI Deep Learning?

- [What is MEGA used for?](https://www.g2.com/discussions/what-is-mega-used-for)

### 2. [Nilearn](https://www.g2.com/products/nilearn/reviews)
Nilearn is a Python module for fast and easy statistical learning on NeuroImaging data that leverages the scikit-learn Python toolbox for multivariate statistics with applications such as predictive modelling, classification, decoding, or connectivity analysis.


**Average Rating:** 4.2/5.0
**Total Reviews:** 3
**How Do G2 Users Rate Nilearn?**

- **Ease of Use:** 8.3/10 (Category avg: 8.8/10)

**Who Is the Company Behind Nilearn?**

- **Seller:** [Nilearn](https://www.g2.com/sellers/nilearn)
- **HQ Location:** N/A
- **LinkedIn® Page:** https://www.linkedin.com/company/No-Linkedin-Presence-Added-Intentionally-By-DataOps (1 employees on LinkedIn®)

**Who Uses This Product?**
- **Company Size:** 67% Enterprise, 33% Small-Business



#### What Are Recent G2 Reviews of Nilearn?

**"[Best For Applying ML on NeuroImaging Data.](https://www.g2.com/survey_responses/nilearn-review-732300)"**

**Rating:** 5.0/5.0 stars
*— Paresh A.*

[Read full review](https://www.g2.com/survey_responses/nilearn-review-732300)

---

**"[Machine Learning for Neuro Imaging Data](https://www.g2.com/survey_responses/nilearn-review-729829)"**

**Rating:** 5.0/5.0 stars
*— Darshit P.*

[Read full review](https://www.g2.com/survey_responses/nilearn-review-729829)

---



### 3. [SentiSight.ai](https://www.g2.com/products/sentisight-ai/reviews)
SentiSight.ai is a web-based platform that can be used for image labeling and for developing AI-based image recognition applications. It has two major goals: the first is to make the image annotation task as convenient and efficient as possible, even for large projects with many people working on image labeling, and the second is to provide a smooth and user-friendly interface for training and deploying deep neural network models. The ability to perform both of these tasks on the same platform provides the advantage of being able to label images and then train and improve models in an iterative way. SentiSight.ai offers powerful features, such as: Image labeling. Our labeling tool allows adding classification labels, bounding boxes, polygons, points, polylines, and bitmaps. Bitmaps can be easily converted to polygons and vice versa. Moreover, each labeled object can have several child objects, such as key-points or attributes. The labeled images can be directly used for model training on the SentiSight.ai platform, or they can be downloaded and used for in-house model training. Smart labeling tool. This tool can be used to significantly increase the speed of bitmap labeling. The smart labeling tool allows users to select a few points in the foreground and the background and let the AI extract the labeled object. Shared labeling projects and time tracking. To make large annotation project handling easier, SentiSight.ai allows a project to be shared among multiple users so that multiple people can label images in the same project. The project manager can quickly filter and review the images labeled by a particular project member, track each person’s progress and time spent on labeling, as well as manage user roles and permissions. Classification model training. This type of model can be used to identify certain objects in an image, such as a cat or a dog, but without specifying their location. They can also be trained to identify more abstract concepts, such as “summer” or “winter”. Object detection model training. This type of model can be used not to only identify a certain object, but also to predict its exact location in an image. For each object predicted to be inside the image, the model also predicts a rectangular bounding box that denotes the object’s location. This is very useful when you need to know not only what is inside the image, but also the relative location and number of objects. Online and offline models (free 30-day trial available). SentiSight.ai offers a possibility to use your deep learning models both online and offline. Online models can be used via REST API or web interface. Both of these options require internet connection. Another option is to download and use the image recognition model offline. An offline model can be downloaded as a free 30-day trial after which the user has an option to buy a license. The price of the license depends on the speed of the model, and it is a single time payment. Pre-trained models. In addition to the possibility of training image recognition models yourself, SentiSight.ai also provides several pre-trained models that can be used out-of-the-box without any additional training. These pre-trained models can be used for several tasks, such as content moderation, goods classification, automatic hashtags, people counting and more. Image Similarity search. This is another ready-to-use feature that allows users to upload an image and find all similar images to this query in their data set. It also allows users to perform NvN similarity searches in their data set where all similar image pairs are retrieved.


**Average Rating:** 4.8/5.0
**Total Reviews:** 3
**How Do G2 Users Rate SentiSight.ai?**

- **Object Detection:** 8.3/10 (Category avg: 8.7/10)
- **Ease of Use:** 8.3/10 (Category avg: 8.8/10)
- **Custom Image Detection:** 8.3/10 (Category avg: 8.5/10)
- **Bounding Boxes:** 8.3/10 (Category avg: 8.3/10)

**Who Is the Company Behind SentiSight.ai?**

- **Seller:** [NeuroTechnology](https://www.g2.com/sellers/neurotechnology)
- **Year Founded:** 1990
- **HQ Location:** Vilnius, LT
- **Twitter:** @StockGeist (273 Twitter followers)
- **LinkedIn® Page:** https://www.linkedin.com/company/neurotechnology/ (89 employees on LinkedIn®)

**Who Uses This Product?**
- **Company Size:** 67% Small-Business



#### What Are Recent G2 Reviews of SentiSight.ai?

**"[Useful API for integration](https://www.g2.com/survey_responses/sentisight-ai-review-7365033)"**

**Rating:** 5.0/5.0 stars
*— Sam C.*

[Read full review](https://www.g2.com/survey_responses/sentisight-ai-review-7365033)

---

**"[An advanced image labeling platform that is easy to navigate and use](https://www.g2.com/survey_responses/sentisight-ai-review-7329240)"**

**Rating:** 5.0/5.0 stars
*— Verified User in Retail*

[Read full review](https://www.g2.com/survey_responses/sentisight-ai-review-7329240)

---



### 4. [Vize.ai -  Custom Image Classification](https://www.g2.com/products/vize-ai-custom-image-classification/reviews)
Vize.ai AI is custom image recognition and classification API, designed to allow developers and businesses to analyze image data.


**Average Rating:** 4.8/5.0
**Total Reviews:** 3
**How Do G2 Users Rate Vize.ai -  Custom Image Classification?**

- **Object Detection:** 8.3/10 (Category avg: 8.7/10)
- **Ease of Use:** 9.4/10 (Category avg: 8.8/10)
- **Custom Image Detection:** 8.3/10 (Category avg: 8.5/10)
- **Bounding Boxes:** 8.3/10 (Category avg: 8.3/10)

**Who Is the Company Behind Vize.ai -  Custom Image Classification?**

- **Seller:** [Vize](https://www.g2.com/sellers/vize)
- **HQ Location:** N/A
- **LinkedIn® Page:** https://www.linkedin.com/company/No-Linkedin-Presence-Added-Intentionally-By-DataOps (1 employees on LinkedIn®)

**Who Uses This Product?**
- **Company Size:** 67% Small-Business, 33% Mid-Market


#### What Are Vize.ai -  Custom Image Classification's Pros and Cons?

**Pros:**

- AI Technology (1 reviews)
- Annotation Efficiency (1 reviews)
- Ease of Use (1 reviews)



### What Do G2 Reviewers Say About Vize.ai -  Custom Image Classification?
*AI-generated summary from verified user reviews*

**Pros:**

- Users appreciate the **ease of uploading and labeling images** , which enhances the training process significantly.
- Users praise the **annotation efficiency** of Vize.ai, enabling easy image uploads and effective model training.
- Users appreciate the **ease of uploading and labeling images** , which simplifies the training process for custom models.


#### What Are Recent G2 Reviews of Vize.ai -  Custom Image Classification?

**"[I loved the vize.ai](https://www.g2.com/survey_responses/vize-ai-custom-image-classification-review-11215957)"**

**Rating:** 5.0/5.0 stars
*— Pratik K.*

[Read full review](https://www.g2.com/survey_responses/vize-ai-custom-image-classification-review-11215957)

---

**"[Deep Image Classification made Easy](https://www.g2.com/survey_responses/vize-ai-custom-image-classification-review-921024)"**

**Rating:** 5.0/5.0 stars
*— Mittal S.*

[Read full review](https://www.g2.com/survey_responses/vize-ai-custom-image-classification-review-921024)

---



### 5. [AForge.NET](https://www.g2.com/products/aforge-net/reviews)
AForge.MachineLearning is a namespace that contains interfaces and classes for different algorithms of machine learning.


**Average Rating:** 3.8/5.0
**Total Reviews:** 2
**How Do G2 Users Rate AForge.NET?**

- **Ease of Use:** 6.7/10 (Category avg: 8.8/10)

**Who Is the Company Behind AForge.NET?**

- **Seller:** [Accord.NET](https://www.g2.com/sellers/accord-net)
- **HQ Location:** N/A
- **LinkedIn® Page:** https://www.linkedin.com/company/No-Linkedin-Presence-Added-Intentionally-By-DataOps (1 employees on LinkedIn®)

**Who Uses This Product?**
- **Company Size:** 50% Enterprise, 50% Mid-Market



#### What Are Recent G2 Reviews of AForge.NET?

**"[Best ROI in machine learning framework](https://www.g2.com/survey_responses/aforge-net-review-536374)"**

**Rating:** 4.0/5.0 stars
*— Verified User in Internet*

[Read full review](https://www.g2.com/survey_responses/aforge-net-review-536374)

---


#### What Are G2 Users Discussing About AForge.NET?

- [What is AForge.MachineLearning used for?](https://www.g2.com/discussions/what-is-aforge-machinelearning-used-for)

### 6. [AscenderAI](https://www.g2.com/products/ascenderai/reviews)
Ascender AI LLC was founded in 2019 by a visionary research scientist and two well established AI entrepreneurs.&amp;nbsp; Braddock Gaskill, the CEO, has over 25 years of experience in AI and machine learning. Co-founders Mudar Yaghi and Mohammad Shihadah have spent the past 30 years bringing a family of pioneering AI-driven companies to life.


**Average Rating:** 4.5/5.0
**Total Reviews:** 2
**How Do G2 Users Rate AscenderAI?**

- **Object Detection:** 10.0/10 (Category avg: 8.7/10)
- **Ease of Use:** 10.0/10 (Category avg: 8.8/10)
- **Custom Image Detection:** 10.0/10 (Category avg: 8.5/10)
- **Bounding Boxes:** 8.3/10 (Category avg: 8.3/10)

**Who Is the Company Behind AscenderAI?**

- **Seller:** [Braddock Gaskill](https://www.g2.com/sellers/braddock-gaskill)
- **HQ Location:** N/A
- **LinkedIn® Page:** https://www.linkedin.com/company/No-Linkedin-Presence-Added-Intentionally-By-DataOps (1 employees on LinkedIn®)

**Who Uses This Product?**
- **Company Size:** 100% Mid-Market



#### What Are Recent G2 Reviews of AscenderAI?

**"[Useful aspects regarding the analysis of the customers’ feedback](https://www.g2.com/survey_responses/ascenderai-review-10228193)"**

**Rating:** 4.0/5.0 stars
*— Yuzi Y.*

[Read full review](https://www.g2.com/survey_responses/ascenderai-review-10228193)

---

**"[AI makes hard work into smart work](https://www.g2.com/survey_responses/ascenderai-review-10174455)"**

**Rating:** 5.0/5.0 stars
*— Madhan  G.*

[Read full review](https://www.g2.com/survey_responses/ascenderai-review-10174455)

---



### 7. [Azure AI Video Indexer](https://www.g2.com/products/azure-ai-video-indexer/reviews)
Azure AI Video Indexer is a cloud and edge video analytics service that uses AI to extract actionable insights from stored videos. Enhance ad insertion, digital asset management, and media libraries by analyzing audio and video content—no machine learning expertise necessary.


**Average Rating:** 4.5/5.0
**Total Reviews:** 2
**How Do G2 Users Rate Azure AI Video Indexer?**

- **Object Detection:** 8.3/10 (Category avg: 8.7/10)
- **Ease of Use:** 8.3/10 (Category avg: 8.8/10)
- **Custom Image Detection:** 10.0/10 (Category avg: 8.5/10)
- **Bounding Boxes:** 8.3/10 (Category avg: 8.3/10)

**Who Is the Company Behind Azure AI Video Indexer?**

- **Seller:** [Microsoft](https://www.g2.com/sellers/microsoft)
- **Year Founded:** 1975
- **HQ Location:** Redmond, Washington
- **Twitter:** @microsoft (13,091,739 Twitter followers)
- **LinkedIn® Page:** https://www.linkedin.com/company/microsoft/ (231,632 employees on LinkedIn®)
- **Ownership:** MSFT

**Who Uses This Product?**
- **Company Size:** 100% Small-Business


#### What Are Azure AI Video Indexer's Pros and Cons?

**Pros:**

- Automation (1 reviews)
- Facial Recognition (1 reviews)
- Features (1 reviews)
- Object Recognition (1 reviews)

**Cons:**

- Expensive (1 reviews)
- Privacy Issues (1 reviews)


### What Do G2 Reviewers Say About Azure AI Video Indexer?
*AI-generated summary from verified user reviews*

**Pros:**

- Users appreciate the **automation capabilities** of Azure AI Video Indexer, benefiting from its scalable cloud features.
- Users love the **facial recognition** feature for its accuracy and reliability, enhancing the overall experience with Azure AI Video Indexer.
- Users value the **scalable cloud-enabled features** of Azure AI Video Indexer, enhancing their video indexing experience.
- Users value the **object recognition** capabilities of Azure AI Video Indexer, enhancing content analysis and searchability.

**Cons:**

- Users find Azure AI Video Indexer to be **quite expensive** , which may limit accessibility and usage for some.
- Users express concern over **privacy issues** due to reliance on cloud services for Azure AI Video Indexer.

#### What Are Recent G2 Reviews of Azure AI Video Indexer?

**"[A powerful AI driven service to extract deep insights from video and audio.](https://www.g2.com/survey_responses/azure-ai-video-indexer-review-10280464)"**

**Rating:** 4.0/5.0 stars
*— Asif R.*

[Read full review](https://www.g2.com/survey_responses/azure-ai-video-indexer-review-10280464)

---

**"[Best Cloud Enabled Video Indexer](https://www.g2.com/survey_responses/azure-ai-video-indexer-review-10739912)"**

**Rating:** 5.0/5.0 stars
*— Sukanth G.*

[Read full review](https://www.g2.com/survey_responses/azure-ai-video-indexer-review-10739912)

---



### 8. [Catchoom CraftAR Image Recognition &amp; Augmented Reality](https://www.g2.com/products/catchoom-craftar-image-recognition-augmented-reality/reviews)
CraftAR by Catchoom is an image recognition and augmented reality platform for mobile and web applications.


**Average Rating:** 4.8/5.0
**Total Reviews:** 2
**How Do G2 Users Rate Catchoom CraftAR Image Recognition &amp; Augmented Reality?**

- **Object Detection:** 10.0/10 (Category avg: 8.7/10)
- **Ease of Use:** 6.7/10 (Category avg: 8.8/10)
- **Custom Image Detection:** 8.3/10 (Category avg: 8.5/10)
- **Bounding Boxes:** 8.3/10 (Category avg: 8.3/10)

**Who Is the Company Behind Catchoom CraftAR Image Recognition &amp; Augmented Reality?**

- **Seller:** [Partium](https://www.g2.com/sellers/partium)
- **Year Founded:** 2020
- **HQ Location:** Philadelphia, US
- **Twitter:** @partiumio (2,094 Twitter followers)
- **LinkedIn® Page:** https://www.linkedin.com/company/partium-io/ (48 employees on LinkedIn®)

**Who Uses This Product?**
- **Company Size:** 50% Small-Business, 50% Mid-Market



#### What Are Recent G2 Reviews of Catchoom CraftAR Image Recognition &amp; Augmented Reality?

**"[Amazing image recognizing solution.](https://www.g2.com/survey_responses/catchoom-craftar-image-recognition-augmented-reality-review-9655348)"**

**Rating:** 5.0/5.0 stars
*— Verified User in Computer Software*

[Read full review](https://www.g2.com/survey_responses/catchoom-craftar-image-recognition-augmented-reality-review-9655348)

---

**"[Artwork to meet the artist](https://www.g2.com/survey_responses/catchoom-craftar-image-recognition-augmented-reality-review-6796422)"**

**Rating:** 4.5/5.0 stars
*— Graham B.*

[Read full review](https://www.g2.com/survey_responses/catchoom-craftar-image-recognition-augmented-reality-review-6796422)

---



### 9. [DagsHub](https://www.g2.com/products/dagshub/reviews)
DagsHub is a platform that allows you to easily create high-quality datasets for better model performance A single AI platform to curate vision, audio, and document data - automate labeling workflows, and evaluate models. Enterprises with sensitive data, can run on their own infrastructure on-prem and get a full AI platform. Data curation - create the very best datasets. Data annotation - annotate your vision, audio, and document data. Auto labeling - automate your annotation flow with pre-built templates and active learning. Data versioning - version your datasets for reproducibility. Experiment tracking - track your experiment progress, understand trends, and compare results. Model registry - manage your models and deployments in one place. The top data scientists build AI with DagsHub including teams at: Google, Harvard Medicine, Beewise, Macso, and Mana.bio


**Average Rating:** 4.8/5.0
**Total Reviews:** 14
**How Do G2 Users Rate DagsHub?**

- **Object Detection:** 10.0/10 (Category avg: 8.7/10)
- **Ease of Use:** 9.2/10 (Category avg: 8.8/10)
- **Custom Image Detection:** 6.7/10 (Category avg: 8.5/10)
- **Bounding Boxes:** 8.3/10 (Category avg: 8.3/10)

**Who Is the Company Behind DagsHub?**

- **Seller:** [DagsHub](https://www.g2.com/sellers/dagshub)
- **HQ Location:** San Francisco, US
- **LinkedIn® Page:** https://www.linkedin.com/company/dagshub (12 employees on LinkedIn®)

**Who Uses This Product?**
- **Top Industries:** Computer Software
- **Company Size:** 50% Small-Business, 43% Mid-Market


#### What Are DagsHub's Pros and Cons?

**Pros:**

- Data Management (12 reviews)
- Model Management (12 reviews)
- Collaboration (11 reviews)
- Features (10 reviews)
- Integrated Platform (10 reviews)

**Cons:**

- Limited Functionality (2 reviews)
- Error Handling (1 reviews)
- Expensive (1 reviews)
- Limited Customization (1 reviews)
- Limited Free Access (1 reviews)


### What Do G2 Reviewers Say About DagsHub?
*AI-generated summary from verified user reviews*

**Pros:**

- Users value the **effective data management** capabilities of DagsHub, enhancing reproducibility and collaboration in ML projects.
- Users value the **integrated management of data, code, and experiments** in DagsHub, enhancing productivity and collaboration.
- Users appreciate the **seamless collaboration** features of DagsHub, enhancing productivity and efficiency in data management and experimentation.
- Users appreciate the **integration of data and experiments** in DagsHub, enhancing reproducibility and collaboration in ML projects.
- Users value the **integrated platform** of DagsHub for simplifying data management and enhancing collaboration in ML projects.

**Cons:**

- Users find the **limited functionality** of DagsHub restrictive, especially regarding collaboration on the free plan.
- Users experience **error handling issues** with DAGsHub, particularly when pushing files and loading projects.
- Users find DagsHub to be **expensive** , especially with strict limitations on the free plan for larger teams.
- Users are frustrated with the **limited customization** options on DagsHub, especially regarding team size restrictions.
- Users find the **strict limitations of the free plan** frustrating, affecting team collaboration and accessibility.

#### What Are Recent G2 Reviews of DagsHub?

**"[Reliable Infrastructure for LLM Data and Model Iteration](https://www.g2.com/survey_responses/dagshub-review-11087413)"**

**Rating:** 5.0/5.0 stars
*— Ignacio P.*

[Read full review](https://www.g2.com/survey_responses/dagshub-review-11087413)

---

**"[Simplifies LLM Dataset Versioning and Experiment Tracking](https://www.g2.com/survey_responses/dagshub-review-11144209)"**

**Rating:** 5.0/5.0 stars
*— Gourav B.*

[Read full review](https://www.g2.com/survey_responses/dagshub-review-11144209)

---



### 10. [EBLearn](https://www.g2.com/products/eblearn/reviews)
Eblearn is an object-oriented C++ library that implements various machine learning models, including energy-based learning, gradient-based learning for machine composed of multiple heterogeneous modules.


**Average Rating:** 3.8/5.0
**Total Reviews:** 2
**How Do G2 Users Rate EBLearn?**

- **Object Detection:** 10.0/10 (Category avg: 8.7/10)
- **Ease of Use:** 9.2/10 (Category avg: 8.8/10)
- **Custom Image Detection:** 9.2/10 (Category avg: 8.5/10)
- **Bounding Boxes:** 8.3/10 (Category avg: 8.3/10)

**Who Is the Company Behind EBLearn?**

- **Seller:** [EBLearn](https://www.g2.com/sellers/eblearn)
- **HQ Location:** New York, NY
- **LinkedIn® Page:** https://www.linkedin.com/company/No-Linkedin-Presence-Added-Intentionally-By-DataOps (1 employees on LinkedIn®)

**Who Uses This Product?**
- **Company Size:** 100% Mid-Market



#### What Are Recent G2 Reviews of EBLearn?

**"[All in one experience portal for programming learners](https://www.g2.com/survey_responses/eblearn-review-8869134)"**

**Rating:** 4.5/5.0 stars
*— Ruchiket B.*

[Read full review](https://www.g2.com/survey_responses/eblearn-review-8869134)

---



### 11. [KBY-AI Face Recognition](https://www.g2.com/products/kby-ai-face-recognition/reviews)
The Face Recognition SDK is designed to be efficient, using low memory and delivering high performance. This solution stands for face recognition, facial recognition, face liveness check, spoofing prevention, face matching, face comparison, face search engine, face identification on biometric authentication system. We offer multi-platform solutions including face recognition Android, face recognition iOS, face recognition Flutter, face recognition React-Native, face recognition docker, face recognition server(Linux/Windows)


**Average Rating:** 5.0/5.0
**Total Reviews:** 2
**How Do G2 Users Rate KBY-AI Face Recognition?**

- **Object Detection:** 10.0/10 (Category avg: 8.7/10)
- **Ease of Use:** 10.0/10 (Category avg: 8.8/10)
- **Custom Image Detection:** 10.0/10 (Category avg: 8.5/10)
- **Bounding Boxes:** 10.0/10 (Category avg: 8.3/10)

**Who Is the Company Behind KBY-AI Face Recognition?**

- **Seller:** [KBY-AI](https://www.g2.com/sellers/kby-ai)
- **Year Founded:** 2020
- **HQ Location:** Essex, GB
- **LinkedIn® Page:** https://www.linkedin.com/company/kby-ai-identity-verification-sdk (1 employees on LinkedIn®)

**Who Uses This Product?**
- **Company Size:** 100% Small-Business



#### What Are Recent G2 Reviews of KBY-AI Face Recognition?

**"[GOOD PRODUCT](https://www.g2.com/survey_responses/kby-ai-face-recognition-review-9621506)"**

**Rating:** 5.0/5.0 stars
*— Abigail F.*

[Read full review](https://www.g2.com/survey_responses/kby-ai-face-recognition-review-9621506)

---

**"[I have rich experience in biometrics](https://www.g2.com/survey_responses/kby-ai-face-recognition-review-9621511)"**

**Rating:** 5.0/5.0 stars
*— Lucas W.*

[Read full review](https://www.g2.com/survey_responses/kby-ai-face-recognition-review-9621511)

---



### 12. [MobileEngine](https://www.g2.com/products/mobileengine/reviews)
MobileEngine makes it easy for you to add image recognition to your app. You provide a reference database of images (e.g. artwork, consumer packaged goods, book covers, catalog pages, etc.) and when your users photograph that object, MobileEngine finds your matching reference image.


**Average Rating:** 4.5/5.0
**Total Reviews:** 2
**How Do G2 Users Rate MobileEngine?**

- **Object Detection:** 6.7/10 (Category avg: 8.7/10)
- **Ease of Use:** 9.2/10 (Category avg: 8.8/10)
- **Custom Image Detection:** 8.3/10 (Category avg: 8.5/10)
- **Bounding Boxes:** 8.3/10 (Category avg: 8.3/10)

**Who Is the Company Behind MobileEngine?**

- **Seller:** [TinEye](https://www.g2.com/sellers/tineye)
- **HQ Location:** Toronto, CA
- **Twitter:** @TinEye (7,635 Twitter followers)
- **LinkedIn® Page:** https://www.linkedin.com/company/1455004/ (15 employees on LinkedIn®)

**Who Uses This Product?**
- **Company Size:** 50% Mid-Market, 50% Small-Business



#### What Are Recent G2 Reviews of MobileEngine?

**"[Great User Experience](https://www.g2.com/survey_responses/mobileengine-review-1215930)"**

**Rating:** 5.0/5.0 stars
*— Nicolas F.*

[Read full review](https://www.g2.com/survey_responses/mobileengine-review-1215930)

---

**"[Great UX](https://www.g2.com/survey_responses/mobileengine-review-6760980)"**

**Rating:** 4.0/5.0 stars
*— Verified User in Automotive*

[Read full review](https://www.g2.com/survey_responses/mobileengine-review-6760980)

---


#### What Are G2 Users Discussing About MobileEngine?

- [What is MobileEngine used for?](https://www.g2.com/discussions/what-is-mobileengine-used-for)

### 13. [muse.ai](https://www.g2.com/products/muse-ai/reviews)
muse.ai is a video search platform that enables anyone to quickly find particular moments in large amounts videos. It is also a complete video storage and streaming platform that allows users to embed the most advanced video search in any website.


**Average Rating:** 4.9/5.0
**Total Reviews:** 15
**How Do G2 Users Rate muse.ai?**

- **Ease of Use:** 9.2/10 (Category avg: 8.8/10)

**Who Is the Company Behind muse.ai?**

- **Seller:** [muse.ai](https://www.g2.com/sellers/muse-ai)
- **HQ Location:** San Ramon, US
- **Twitter:** @video_ai (1,030 Twitter followers)
- **LinkedIn® Page:** https://www.linkedin.com/company/33434227/ (2 employees on LinkedIn®)

**Who Uses This Product?**
- **Company Size:** 87% Small-Business



#### What Are Recent G2 Reviews of muse.ai?

**"[I love Muse.ai!!](https://www.g2.com/survey_responses/muse-ai-review-7730771)"**

**Rating:** 5.0/5.0 stars
*— Susan T.*

[Read full review](https://www.g2.com/survey_responses/muse-ai-review-7730771)

---

**"[Customer service is excellent and their product is hands down the best video platform I have used!](https://www.g2.com/survey_responses/muse-ai-review-7458131)"**

**Rating:** 5.0/5.0 stars
*— David F.*

[Read full review](https://www.g2.com/survey_responses/muse-ai-review-7458131)

---


#### What Are G2 Users Discussing About muse.ai?

- [What is muse.ai used for?](https://www.g2.com/discussions/what-is-muse-ai-used-for)

### 14. [Partium](https://www.g2.com/products/partium/reviews)
Partium’s story began in 2020 with the idea of creating a lightning-fast, instant, and reliable search experience for everyone looking for spare parts. We reduced the need for technicians and users of parts catalogs and web shops to spend endless time searching for the right part. Instead, we help users to find the right spare part in seconds. Today, Partium handles millions of spare part searches every month and helps countless technicians find the right part to get the job done. The power of the Partium search is being used in spare part web shops, part catalogs, and spare part portals across the world. Our customers introduce Partium into their digital Aftersales environments to provide the best-in-class part-search experience to their users and give them a fast and convenient process to search, confirm and order spare parts from them. Caterpillar, Parker, Liebherr, Deutsche Bahn, New Holland, The Home Depot, ENGEL, and many other companies use Partium to provide not just a great search for their customers but a search that converts at higher rates because of relevancy, accuracy, and ease-of-use. We help their customers to find the right parts faster – and help them to enhance their online experience, increase conversion rates and generate profitable growth for their online aftersales business. With offices in the US, Canada, and Europe, we are a global company committed to changing the way Aftersales is done.


**Average Rating:** 3.3/5.0
**Total Reviews:** 2
**How Do G2 Users Rate Partium?**

- **Object Detection:** 10.0/10 (Category avg: 8.7/10)
- **Ease of Use:** 6.7/10 (Category avg: 8.8/10)
- **Custom Image Detection:** 10.0/10 (Category avg: 8.5/10)
- **Bounding Boxes:** 8.3/10 (Category avg: 8.3/10)

**Who Is the Company Behind Partium?**

- **Seller:** [Partium](https://www.g2.com/sellers/partium)
- **Year Founded:** 2020
- **HQ Location:** Philadelphia, US
- **Twitter:** @partiumio (2,094 Twitter followers)
- **LinkedIn® Page:** https://www.linkedin.com/company/partium-io/ (48 employees on LinkedIn®)

**Who Uses This Product?**
- **Company Size:** 100% Mid-Market, 33% Small-Business


#### What Are Partium's Pros and Cons?

**Pros:**

- AI Technology (1 reviews)
- Efficiency (1 reviews)
- User Interface (1 reviews)

**Cons:**

- Limited Search Features (1 reviews)


### What Do G2 Reviewers Say About Partium?
*AI-generated summary from verified user reviews*

**Pros:**

- Users benefit from the **efficient AI-enabled search** in Partium, simplifying the process of ordering spare parts.
- Users praise the **efficiency** of Partium&#39;s AI-enabled search for quickly finding spare parts.
- Users find the **user-friendly interface** of Partium enhances their efficiency in locating spare parts quickly.

**Cons:**

- Users often face **limited search features** , leading to inconsistencies and difficulties in finding accurate results.

#### What Are Recent G2 Reviews of Partium?

**"[Value for money](https://www.g2.com/survey_responses/partium-review-10494051)"**

**Rating:** 4.0/5.0 stars
*— Hemant S.*

[Read full review](https://www.g2.com/survey_responses/partium-review-10494051)

---



### 15. [Plainsight](https://www.g2.com/products/plainsight/reviews)
Plainsight is a Vision AI platform that helps enterprises turn images and video into actionable operational intelligence. The Plainsight Platform simplifies the full computer vision lifecycle, from data collection and model training to deployment, monitoring, and continuous improvement. With Plainsight, teams can build, manage, and scale custom computer vision solutions that improve visibility, automate manual processes, reduce risk, and uncover insights from real-world environments. Plainsight is designed for enterprises that need production-ready Vision AI across industries such as restaurants, retail, manufacturing, logistics, and other operationally complex environments.For more information, visit https://plainsight.ai.


**Average Rating:** 4.5/5.0
**Total Reviews:** 5
**How Do G2 Users Rate Plainsight?**

- **Object Detection:** 8.3/10 (Category avg: 8.7/10)
- **Ease of Use:** 10.0/10 (Category avg: 8.8/10)
- **Custom Image Detection:** 6.7/10 (Category avg: 8.5/10)
- **Bounding Boxes:** 8.3/10 (Category avg: 8.3/10)

**Who Is the Company Behind Plainsight?**

- **Seller:** [Plainsight](https://www.g2.com/sellers/plainsight)
- **Year Founded:** 2024
- **HQ Location:** Greater Seattle Area, US
- **Twitter:** @PlainsightAI (1,456 Twitter followers)
- **LinkedIn® Page:** https://www.linkedin.com/company/plainsightai/ (22 employees on LinkedIn®)

**Who Uses This Product?**
- **Company Size:** 80% Small-Business, 20% Mid-Market


#### What Are Plainsight's Pros and Cons?

**Pros:**

- AI Capabilities (1 reviews)
- AI Integration (1 reviews)
- AI Modeling (1 reviews)
- AI Technology (1 reviews)
- Innovation (1 reviews)

**Cons:**

- Required Expertise (1 reviews)
- Required Knowledge (1 reviews)


### What Do G2 Reviewers Say About Plainsight?
*AI-generated summary from verified user reviews*

**Pros:**

- Users value the **no-code and low-code options** of Plainsight, enhancing accessibility to AI vision technology.
- Users value the **no-code and low-code options** , making AI vision easily accessible for everyone.
- Users value the **no-code and low-code options** in Plainsight, enhancing accessibility to AI vision technology for everyone.
- Users value the **no-code and low-code options** of Plainsight, enhancing accessibility to AI vision technology.
- Users appreciate the **no-code and low-code options** of Plainsight, enhancing accessibility to AI vision technology.

**Cons:**

- Users note that some **advanced features require technical expertise** , making it challenging for those without coding skills.
- Users find that **advanced features still require technical knowledge** , which can be a barrier for some of them.

#### What Are Recent G2 Reviews of Plainsight?

**"[An end-to-end innovative AI solution](https://www.g2.com/survey_responses/plainsight-review-9581873)"**

**Rating:** 5.0/5.0 stars
*— Nimish G.*

[Read full review](https://www.g2.com/survey_responses/plainsight-review-9581873)

---

**"[Simplifying AI Vision with Powerful End-to-End Solutions](https://www.g2.com/survey_responses/plainsight-review-10956680)"**

**Rating:** 4.5/5.0 stars
*— Ajit S.*

[Read full review](https://www.g2.com/survey_responses/plainsight-review-10956680)

---


#### What Are G2 Users Discussing About Plainsight?

- [What is Plainsight used for?](https://www.g2.com/discussions/what-is-plainsight-used-for)

### 16. [SentiVeillance Cluster](https://www.g2.com/products/neurotechnology-sentiveillance-cluster/reviews)
SentiVeillance Cluster Persons or vehicles recognition and tracking for video management systems (VMS) SentiVeillance Cluster is a ready-to-use software for easy integration of biometric face identification, vehicle and pedestrian classification and tracking, as well as automatic license plate recognition into operating video management systems (VMS). The software analyzes live video streams, which are served by a VMS from surveillance cameras.


**Average Rating:** 4.3/5.0
**Total Reviews:** 5
**How Do G2 Users Rate SentiVeillance Cluster?**

- **Ease of Use:** 9.3/10 (Category avg: 8.8/10)

**Who Is the Company Behind SentiVeillance Cluster?**

- **Seller:** [NeuroTechnology](https://www.g2.com/sellers/neurotechnology)
- **Year Founded:** 1990
- **HQ Location:** Vilnius, LT
- **Twitter:** @StockGeist (273 Twitter followers)
- **LinkedIn® Page:** https://www.linkedin.com/company/neurotechnology/ (89 employees on LinkedIn®)

**Who Uses This Product?**
- **Company Size:** 60% Small-Business, 20% Enterprise


#### What Are SentiVeillance Cluster's Pros and Cons?

**Pros:**

- Tracking (2 reviews)
- AI Technology (1 reviews)
- Facial Recognition (1 reviews)
- Helpful (1 reviews)
- Monitoring (1 reviews)

**Cons:**

- Difficult Training (1 reviews)
- Expensive (1 reviews)
- Inefficient Resource Management (1 reviews)
- Limited Functionality (1 reviews)
- Limited Storage (1 reviews)


### What Do G2 Reviewers Say About SentiVeillance Cluster?
*AI-generated summary from verified user reviews*

**Pros:**

- Users appreciate the **precise tracking system** of SentiVeillance Cluster, making security management more efficient and effective.
- Users commend the **high accuracy of object detection** in SentiVeillance Cluster, enhancing security and simplifying operations.
- Users find the **real-time facial recognition** of SentiVeillance Cluster greatly enhances security and efficiency in surveillance.
- Users find the **surveillance reports** of SentiVeillance Cluster invaluable for tracking branch visits efficiently.
- Users value the **effective monitoring** capabilities of SentiVeillance Cluster, enhancing branch analysis with minimal manpower.

**Cons:**

- Users face the **difficult training** required for SentiVeillance Cluster, involving time-consuming fine-tuning for specific environments.
- Users find the **high cost** of SentiVeillance Cluster concerning, compounded by limited customer support availability.
- Users find **inefficient resource management** in SentiVeillance Cluster, as it requires significant time and effort to finetune.
- Users find the **watchlist management features limited** , making it cumbersome to add or update large datasets.
- Users find the **limited storage** for watchlists cumbersome, especially when managing large datasets of individuals and vehicles.

#### What Are Recent G2 Reviews of SentiVeillance Cluster?

**"[Tracking Brach Visits using Facial Recognition](https://www.g2.com/survey_responses/sentiveillance-cluster-review-9657882)"**

**Rating:** 4.0/5.0 stars
*— Harshpal J.*

[Read full review](https://www.g2.com/survey_responses/sentiveillance-cluster-review-9657882)

---

**"[Offer automated license plate recognition](https://www.g2.com/survey_responses/sentiveillance-cluster-review-10410337)"**

**Rating:** 4.0/5.0 stars
*— Muhammad A.*

[Read full review](https://www.g2.com/survey_responses/sentiveillance-cluster-review-10410337)

---



### 17. [Ultralytics](https://www.g2.com/products/ultralytics/reviews)
Ultralytics is a prominent player in the field of vision AI, specializing in advanced computer vision solutions through its innovative YOLO (You Only Look Once) models. Designed to assist users in various industries, Ultralytics&#39; technology enables real-time object detection and image analysis, making it an essential tool for businesses looking to leverage artificial intelligence for enhanced operational efficiency and decision-making. Targeted at a diverse audience that includes professionals in manufacturing, healthcare, transportation, agriculture, and retail, Ultralytics&#39; offerings cater to organizations seeking to implement AI-driven solutions. The versatility of the YOLO models allows users to address a wide range of use cases, from automating quality control in manufacturing to improving patient outcomes in healthcare settings. By providing accessible and efficient AI tools, Ultralytics empowers businesses to harness the power of computer vision, ultimately driving innovation and growth. Key features of Ultralytics&#39; technology include its remarkable speed and accuracy in image processing, which allows for the analysis of 1.6 billion images daily. This capability is complemented by the ability to train 5 million models per day, ensuring that users have access to the most up-to-date and effective AI tools. The YOLO models are designed to be user-friendly, enabling users with varying levels of technical expertise to implement and benefit from the technology without extensive training or resources. The unique selling points of Ultralytics lie in its commitment to AI accessibility and efficiency. By providing open-source solutions with extensive community support, the company fosters collaboration and innovation within the AI space. The impressive track record of over 110,000 GitHub stars and more than 100 million downloads highlights the widespread adoption and trust in Ultralytics&#39; models. As industries continue to evolve and embrace digital transformation, Ultralytics remains at the forefront, offering cutting-edge solutions that meet the demands of a rapidly changing technological landscape.


**Average Rating:** 5.0/5.0
**Total Reviews:** 2
**How Do G2 Users Rate Ultralytics?**

- **Object Detection:** 10.0/10 (Category avg: 8.7/10)
- **Ease of Use:** 10.0/10 (Category avg: 8.8/10)
- **Custom Image Detection:** 9.2/10 (Category avg: 8.5/10)
- **Bounding Boxes:** 9.2/10 (Category avg: 8.3/10)

**Who Is the Company Behind Ultralytics?**

- **Seller:** [Ultralytics](https://www.g2.com/sellers/ultralytics)
- **Company Website:** https://ultralytics.com
- **Year Founded:** 2022
- **HQ Location:** 5001 Judicial Way Frederick, MD 21703, USA
- **Twitter:** @ultralytics (8,876 Twitter followers)
- **LinkedIn® Page:** https://www.linkedin.com/company/ultralytics (37 employees on LinkedIn®)

**Who Uses This Product?**
- **Company Size:** 100% Mid-Market


#### What Are Ultralytics's Pros and Cons?

**Pros:**

- Deployment Ease (2 reviews)
- Ease of Use (2 reviews)
- Efficiency (2 reviews)
- AI Technology (1 reviews)
- Automation (1 reviews)

**Cons:**

- Poor Documentation (2 reviews)
- AI Limitations (1 reviews)
- Confusing Documentation (1 reviews)
- Deployment Issues (1 reviews)
- Insufficient Learning Resources (1 reviews)


### What Do G2 Reviewers Say About Ultralytics?
*AI-generated summary from verified user reviews*

**Pros:**

- Users value the **deployment ease** of Ultralytics, enabling quick proofs of concept and efficient model exports.
- Users appreciate the **ease of use** in Ultralytics, enabling quick development and deployment in customizable environments.
- Users highlight the **efficiency** of Ultralytics, making deployment on devices like Jetson ORIN quick and seamless.
- Users appreciate the **efficient deployment capabilities** of Ultralytics, especially for custom datasets on edge devices.
- Users value the **automated model export** for efficient deployment on edge devices like Jetson ORIN.

**Cons:**

- Users find the **poor documentation** hampers clarity, especially in advanced deployment scenarios and troubleshooting.
- Users note the **inadequate documentation** for advanced deployment scenarios can hinder the user experience with Ultralytics.
- Users find the **documentation confusing** , often encountering outdated information and unclear responses that lead to misunderstandings.
- Users experience **deployment issues** due to insufficient documentation for advanced scenarios, impacting their overall experience.
- Users experience **insufficient learning resources** with outdated documentation and unclear GitHub responses causing misunderstandings.

#### What Are Recent G2 Reviews of Ultralytics?

**"[Easy - Fast - Very good results at first try](https://www.g2.com/survey_responses/ultralytics-review-11773857)"**

**Rating:** 5.0/5.0 stars
*— Verified User in Logistics and Supply Chain*

[Read full review](https://www.g2.com/survey_responses/ultralytics-review-11773857)

---

**"[Edge devices support is Incredible](https://www.g2.com/survey_responses/ultralytics-review-11773759)"**

**Rating:** 5.0/5.0 stars
*— Sahil P.*

[Read full review](https://www.g2.com/survey_responses/ultralytics-review-11773759)

---



### 18. [VizSeek Visual Search](https://www.g2.com/products/vizseek-visual-search/reviews)
The VizSeek visual search engine lets you find products, parts, and drawings in your database using a photo or even a hand-sketch.


**Average Rating:** 4.5/5.0
**Total Reviews:** 2

**Who Is the Company Behind VizSeek Visual Search?**

- **Seller:** [Imaginestics](https://www.g2.com/sellers/imaginestics)
- **HQ Location:** N/A
- **Twitter:** @VizSeek (50 Twitter followers)
- **LinkedIn® Page:** https://www.linkedin.com/company/No-Linkedin-Presence-Added-Intentionally-By-DataOps (1 employees on LinkedIn®)

**Who Uses This Product?**
- **Company Size:** 50% Mid-Market, 50% Small-Business



#### What Are Recent G2 Reviews of VizSeek Visual Search?

**"[The Best Visual Search Ever](https://www.g2.com/survey_responses/vizseek-visual-search-review-7470177)"**

**Rating:** 4.5/5.0 stars
*— Aditya P.*

[Read full review](https://www.g2.com/survey_responses/vizseek-visual-search-review-7470177)

---

**"[Excellent website for search a database using an image or hand sketch](https://www.g2.com/survey_responses/vizseek-visual-search-review-7479675)"**

**Rating:** 4.5/5.0 stars
*— Verified User in Airlines/Aviation*

[Read full review](https://www.g2.com/survey_responses/vizseek-visual-search-review-7479675)

---



### 19. [VLFeat](https://www.g2.com/products/vlfeat/reviews)
VLFeat is an open source library that implements popular computer vision algorithms specializing in image understanding and local features extraction and matching, it include Fisher Vector, VLAD, SIFT, MSER, k-means, hierarchical k-means, agglomerative information bottleneck, SLIC superpixels, quick shift superpixels, large scale SVM training, and many others. It is written in C for efficiency and compatibility, with interfaces in MATLAB for ease of use, and detailed documentation throughout. It supports Windows, Mac OS X, and Linux.


**Average Rating:** 4.0/5.0
**Total Reviews:** 2
**How Do G2 Users Rate VLFeat?**

- **Object Detection:** 6.7/10 (Category avg: 8.7/10)
- **Ease of Use:** 8.3/10 (Category avg: 8.8/10)
- **Custom Image Detection:** 8.3/10 (Category avg: 8.5/10)
- **Bounding Boxes:** 6.7/10 (Category avg: 8.3/10)

**Who Is the Company Behind VLFeat?**

- **Seller:** [VLFeat](https://www.g2.com/sellers/vlfeat)
- **HQ Location:** N/A
- **LinkedIn® Page:** https://www.linkedin.com/company/No-Linkedin-Presence-Added-Intentionally-By-DataOps (1 employees on LinkedIn®)

**Who Uses This Product?**
- **Company Size:** 100% Mid-Market



#### What Are Recent G2 Reviews of VLFeat?

**"[An extensive computer vision library](https://www.g2.com/survey_responses/vlfeat-review-795359)"**

**Rating:** 4.5/5.0 stars
*— Verified User in Computer Software*

[Read full review](https://www.g2.com/survey_responses/vlfeat-review-795359)

---


#### What Are G2 Users Discussing About VLFeat?

- [What is VLFeat used for?](https://www.g2.com/discussions/what-is-vlfeat-used-for)

### 20. [ANPR / ALPR - Number Plate Reading](https://www.g2.com/products/anpr-alpr-number-plate-reading/reviews)
Extremely accurate and fast AI license plate recognition software that uses artificial intelligence methods specifically trained for this task. The software detects all license plates captured in an image, i.e. a photo or video file, and recognizes their content, including special characters and states of registration. It supports single-line and multi-line number plates, including ADR plates with dangerous goods codes. Each latest version of ANPR is always extended to support new types of licence plates newly introduced on the market. Advantages of this technology: accurate location of license plates from a wide range of views, error-free reading even from low quality data, state/country recognition, prediction of the &quot;unreadable&quot; flag, prediction of the &quot;obstructed&quot; flag, including ADR plates reading. Typical applications: e-tolling, law enforcement, parking and entrance solutions, parking zones systems, traffic safety and surveillance systems, police and governmental applications, traffic infrastructure planning systems, smart cities and others.


**Average Rating:** 5.0/5.0
**Total Reviews:** 1
**How Do G2 Users Rate ANPR / ALPR - Number Plate Reading?**

- **Ease of Use:** 10.0/10 (Category avg: 8.8/10)

**Who Is the Company Behind ANPR / ALPR - Number Plate Reading?**

- **Seller:** [Eyedea Recognition](https://www.g2.com/sellers/eyedea-recognition)
- **Year Founded:** 2006
- **HQ Location:** Praha 2, CZ
- **LinkedIn® Page:** https://www.linkedin.com/company/1281906/ (8 employees on LinkedIn®)

**Who Uses This Product?**
- **Company Size:** 100% Small-Business


#### What Are ANPR / ALPR - Number Plate Reading's Pros and Cons?

**Pros:**

- Accuracy (1 reviews)
- Object Recognition (1 reviews)

**Cons:**

- Accuracy Issues (1 reviews)
- Inaccurate Recognition (1 reviews)


### What Do G2 Reviewers Say About ANPR / ALPR - Number Plate Reading?
*AI-generated summary from verified user reviews*

**Pros:**

- Users highlight the **high accuracy** and robustness of Eyedea’s ANPR, effectively reading license plates in diverse conditions.
- Users highlight the **high accuracy and robustness** of ANPR, excelling in diverse conditions and plate formats.

**Cons:**

- Users report **accuracy issues** due to poor image quality and environmental factors impacting ANPR performance.
- Users often experience **inaccurate recognition** due to factors like poor image quality and unstable camera setups.

#### What Are Recent G2 Reviews of ANPR / ALPR - Number Plate Reading?

**"[Highly Accurate, Robust ANPR for Truly International Deployments](https://www.g2.com/survey_responses/anpr-alpr-number-plate-reading-review-12245905)"**

**Rating:** 5.0/5.0 stars
*— Filip K.*

[Read full review](https://www.g2.com/survey_responses/anpr-alpr-number-plate-reading-review-12245905)

---



### 21. [brighter AI](https://www.g2.com/products/brighter-ai/reviews)
Protect identities. Preserve data quality. Innovate faster. brighter AI provides the world’s most advanced image and video anonymization software. We help organizations turn personal data into compliant, usable assets for analytics and machine learning. Our deep learning solutions ensure full compliance with GDPR, CCPA, and APPI by protecting identities in public spaces—all without compromising the data quality needed for video analytics. Privacy and performance, combined.


**Average Rating:** 4.5/5.0
**Total Reviews:** 23
**How Do G2 Users Rate brighter AI?**

- **Object Detection:** 10.0/10 (Category avg: 8.7/10)
- **Ease of Use:** 8.9/10 (Category avg: 8.8/10)
- **Custom Image Detection:** 8.3/10 (Category avg: 8.5/10)
- **Bounding Boxes:** 8.3/10 (Category avg: 8.3/10)

**Who Is the Company Behind brighter AI?**

- **Seller:** [BrighterAi](https://www.g2.com/sellers/brighterai)
- **Year Founded:** 2017
- **HQ Location:** Berlin, Germany
- **Twitter:** @brighterAI (632 Twitter followers)
- **LinkedIn® Page:** https://www.linkedin.com/company/18144227 (30 employees on LinkedIn®)

**Who Uses This Product?**
- **Top Industries:** Information Technology and Services
- **Company Size:** 48% Small-Business, 26% Mid-Market


#### What Are brighter AI's Pros and Cons?

**Pros:**

- AI Technology (1 reviews)
- Data Privacy (1 reviews)
- Ease of Setup (1 reviews)
- Quality Control (1 reviews)

**Cons:**

- Complexity (1 reviews)
- Lack of Guidance (1 reviews)
- Not User-Friendly (1 reviews)


### What Do G2 Reviewers Say About brighter AI?
*AI-generated summary from verified user reviews*

**Pros:**

- Users value the **Deep Natural Anonymization** of Brighter AI, ensuring privacy without sacrificing important visual details.
- Users value the **advanced data privacy** features of Brighter AI, enabling secure and compliant use of visual data.
- Users find the **ease of setup** for Brighter AI to be straightforward and well guided, enhancing their experience.
- Users value the **exceptional quality control** of Brighter AI, ensuring realistic identity replacement while maintaining important details.

**Cons:**

- Users find the **complexity** of brighter AI&#39;s setup and options challenging, especially for newcomers to AI and privacy tools.
- Users find the **lack of guidance** challenging, particularly during setup and initial usage of Brighter AI.
- Users find the **interface not user-friendly** , reporting complexity and a challenging onboarding process for newcomers.

#### What Are Recent G2 Reviews of brighter AI?

**"[Innovative Anonymization with Privacy Compliance](https://www.g2.com/survey_responses/brighter-ai-review-12222728)"**

**Rating:** 4.0/5.0 stars
*— Shubham S.*

[Read full review](https://www.g2.com/survey_responses/brighter-ai-review-12222728)

---

**"[Brighter AI is the next RPA that Protects Identity](https://www.g2.com/survey_responses/brighter-ai-review-7410795)"**

**Rating:** 4.5/5.0 stars
*— Sachidananda C.*

[Read full review](https://www.g2.com/survey_responses/brighter-ai-review-7410795)

---



### 22. [CloudSight API](https://www.g2.com/products/cloudsight-api/reviews)
Cloudsight is an image recognition API providing true understanding for your digital media.


**Average Rating:** 5.0/5.0
**Total Reviews:** 1
**How Do G2 Users Rate CloudSight API?**

- **Ease of Use:** 10.0/10 (Category avg: 8.8/10)

**Who Is the Company Behind CloudSight API?**

- **Seller:** [CloudSight](https://www.g2.com/sellers/cloudsight)
- **Year Founded:** 2012
- **HQ Location:** Los Angeles, US
- **Twitter:** @CloudSightAPI (221 Twitter followers)
- **LinkedIn® Page:** http://www.linkedin.com/company/cloudsight-inc (11 employees on LinkedIn®)

**Who Uses This Product?**
- **Company Size:** 100% Mid-Market



#### What Are Recent G2 Reviews of CloudSight API?

**"[Review for Cloudsight API](https://www.g2.com/survey_responses/cloudsight-api-review-8427878)"**

**Rating:** 5.0/5.0 stars
*— Prajjwal S.*

[Read full review](https://www.g2.com/survey_responses/cloudsight-api-review-8427878)

---



### 23. [CompreFace](https://www.g2.com/products/compreface/reviews)
CompreFace is a free face recognition service from Exadel that can be easily integrated into any system using simple REST API. CompreFace starts quickly with one docker command and could be used by any developer without prior machine learning skills. We use one of the most popular face recognition methods based on deep neural networks, and provide a convenient API for Face Collection training and face recognition. We also provide a convenient roles system with which you can easily control who has access to the Face Collection. Every user can create several Face Collections trained on different subsets of people. The benefits of CompreFace are: 1. Opensource code and fully on-premise (security of your data) 2. Fast start with one docker command 3. Can be set up and used without machine learning knowledge 4. CompreFace uses one of the most popular face recognition methods with high accuracy face-recognizing. The system shows sufficient accuracy even if only one example for each face is used. 5. UI panel with roles for access control


**Average Rating:** 4.5/5.0
**Total Reviews:** 1
**How Do G2 Users Rate CompreFace?**

- **Object Detection:** 8.3/10 (Category avg: 8.7/10)
- **Ease of Use:** 10.0/10 (Category avg: 8.8/10)
- **Custom Image Detection:** 10.0/10 (Category avg: 8.5/10)
- **Bounding Boxes:** 8.3/10 (Category avg: 8.3/10)

**Who Is the Company Behind CompreFace?**

- **Seller:** [Exadel inc.](https://www.g2.com/sellers/exadel-inc)
- **Year Founded:** 1998
- **HQ Location:** Walnut Creek, California, United States
- **LinkedIn® Page:** https://www.linkedin.com/company/exadel (1,808 employees on LinkedIn®)

**Who Uses This Product?**
- **Company Size:** 100% Small-Business



#### What Are Recent G2 Reviews of CompreFace?

**"[Solution for integration of face recognition](https://www.g2.com/survey_responses/compreface-review-8559805)"**

**Rating:** 4.5/5.0 stars
*— Jaspreet K.*

[Read full review](https://www.g2.com/survey_responses/compreface-review-8559805)

---



### 24. [Coreviz Studio](https://www.g2.com/products/coreviz-studio/reviews)
Enables teams, organizations and governments to search through and analyze large image and video datasets with Visual AI.


**Average Rating:** 5.0/5.0
**Total Reviews:** 1
**How Do G2 Users Rate Coreviz Studio?**

- **Ease of Use:** 10.0/10 (Category avg: 8.8/10)

**Who Is the Company Behind Coreviz Studio?**

- **Seller:** [CoreViz](https://www.g2.com/sellers/coreviz)
- **Year Founded:** 2024
- **HQ Location:** San Francisco
- **Twitter:** @withcoreviz (109 Twitter followers)
- **LinkedIn® Page:** https://www.linkedin.com/company/105614537 (1 employees on LinkedIn®)

**Who Uses This Product?**
- **Company Size:** 100% Small-Business


#### What Are Coreviz Studio's Pros and Cons?

**Pros:**

- Accuracy (1 reviews)
- AI Technology (1 reviews)
- Features (1 reviews)

**Cons:**

- Expensive (1 reviews)


### What Do G2 Reviewers Say About Coreviz Studio?
*AI-generated summary from verified user reviews*

**Pros:**

- Users praise the **accuracy** of Coreviz Studio, appreciating its comprehensive AI models for everything from plants to cars.
- Users love the **versatile AI technology** in Coreviz Studio, making organization and classification effortless and comprehensive.
- Users appreciate the **variety of AI models** in Coreviz Studio, finding it comprehensive and user-friendly for organization.

**Cons:**

- Users find the **lack of transparent pricing** frustrating, as it complicates budget planning and decision-making.

#### What Are Recent G2 Reviews of Coreviz Studio?

**"[Easiest way to get started with AI for photos](https://www.g2.com/survey_responses/coreviz-studio-review-11114640)"**

**Rating:** 5.0/5.0 stars
*— Verified User in Government Administration*

[Read full review](https://www.g2.com/survey_responses/coreviz-studio-review-11114640)

---



### 25. [DeepSight](https://www.g2.com/products/deepsight/reviews)
We are committed to empowering smart manufacturing with leading AI technology, machine vision and automation capabilities, solving challenging industrial quality inspection problems, and providing support for the intelligent and digital transformation and upgrading of the manufacturing industry.


**Average Rating:** 4.5/5.0
**Total Reviews:** 1
**How Do G2 Users Rate DeepSight?**

- **Object Detection:** 8.3/10 (Category avg: 8.7/10)
- **Ease of Use:** 8.3/10 (Category avg: 8.8/10)
- **Custom Image Detection:** 10.0/10 (Category avg: 8.5/10)
- **Bounding Boxes:** 8.3/10 (Category avg: 8.3/10)

**Who Is the Company Behind DeepSight?**

- **Seller:** [DeepSight](https://www.g2.com/sellers/deepsight)
- **Year Founded:** 2017
- **HQ Location:** shanghai, CN
- **LinkedIn® Page:** http://www.linkedin.com/company/deepsightinc (11 employees on LinkedIn®)

**Who Uses This Product?**
- **Company Size:** 100% Mid-Market



#### What Are Recent G2 Reviews of DeepSight?

**"[A reliable tool for quick insights and smooth monitoring.](https://www.g2.com/survey_responses/deepsight-review-11700901)"**

**Rating:** 4.5/5.0 stars
*— Nikhil A.*

[Read full review](https://www.g2.com/survey_responses/deepsight-review-11700901)

---




## What Is Image Recognition Software?

[Deep Learning Software](https://www.g2.com/categories/deep-learning)

## What Software Categories Are Similar to Image Recognition Software?

- [Data Science and Machine Learning Platforms](https://www.g2.com/categories/data-science-and-machine-learning-platforms)
- [MLOps Platforms](https://www.g2.com/categories/mlops-platforms)
- [Data Labeling Software](https://www.g2.com/categories/data-labeling)


---

## How Do You Choose the Right Image Recognition Software?

### What You Should Know About Image Recognition Software 

### What is About Image Recognition Software?

Image recognition software, also known as computer vision software, gives users the ability to input images and receive data back in the form of a label. This process, done through [machine learning (ML)](https://www.g2.com/categories/machine-learning), enables end users to gain an understanding of images which they might not be able to do with their naked eye. Since videos are fundamentally composed of a series of images, image recognition software can also be used to analyze video feeds.

The possible uses for this technology are broad and varied. For example, health care professionals can use it to assess if a tumor is malignant or benign. In addition, automotive companies can use image recognition software to further the development of self-driving cars, as image recognition allows the car to “see&quot; by providing labels for what the camera on the car captures. Another popular use case is image search, where users can take a picture of an object and receive search results as a result. Retailers can use this as an alternative to text search. Finally, facial recognition software utilizes image recognition: The algorithm takes a face as an input and produces information as an output.

Key Benefits of Image Recognition Software

- Empower users to gain understanding of images through labeling
- Give end users an opportunity to make meaning out of image data
- Create smarter applications with computer vision capabilities

### Why Use Image Recognition Software?

Business applications with image recognition functionality provide end users with the tools they need to succeed. For example, if a retail company wants to build a smarter search function or a medical institution seeks to supercharge their disease detecting abilities, image recognition algorithms or software can come to the rescue.

**Engaged users —** Incorporating image recognition into applications results in higher productivity for end users, since they can make meaning of the images within the application they use.

**Better applications —** Users spend more time using applications when they are enhanced with image recognition capabilities, leading to enhanced productivity and better deployment of the applications.

**Cut costs —** Building out a robust image recognition function can be a costly endeavor and could take a significant amount of time. While this software might require additional development work in the long run, it helps businesses save money and develop insights.

### Who Uses Image Recognition Software?

Images are just pixels. As a result, with the advancement of AI techniques like deep learning, we are able to grasp the meaning behind these pixels through advanced computer vision techniques. Thanks to the aforementioned technology, image analysis and image-based insights are open to many. However, there are still specific positions that utilize this software more than others.

**Software developers —** Developers that want to create the next generation of products and services can use image recognition software to build computer vision capabilities into their applications, including object recognition, facial recognition, image search, and more .

**Marketers —** Image recognition solutions can provide insights into images for marketers looking to understand the impact and reach of their brand. For example, a marketing professional can use the technology to detect and track their logo across social media platforms.

**Health care professionals —** As the health care industry becomes more digital and image recognition techniques gain traction in the industry, it will be easier for doctors to quickly identify and diagnose maladies to support quick, accurate clinical decision-making.

**Retailers—** Image search is the new text search. As a result, smart retailers are building applications with search powered by image recognition to give end users a more powerful search experience.

### Kinds of Image Recognition Software

By using image recognition software, users can better understand images—unlocking the meaning contained within them. As a result, they can make important business decisions, create better applications, and improve functionality of existing tools.

**Image restoration —** Uses machine learning to improve the quality of images through techniques such as improving focus and reducing blur.

**Object recognition —** Allows for the recognition of objects or object classes for either pre-specified or learned objects.

**Scene reconstruction —** Given images of a scene, or a video, scene reconstruction computes a 3D model of a scene.

**Motion analysis —** Processes video, or image sequences, to track objects or individuals.

### Image Recognition Software Features

Image recognition software tends to have a wide range of features, including image labeling, text detection, and more. These features help end users understand their images better and unlock insights. The following features are found in many image recognition software offerings.

**Image labeling —** Image recognition software allows users to identify objects in an image and can help provide labels for these detected objects. More robust solutions allow users to create custom labels, letting them tailor the labels to their particular industry or use case. By training the machine learning model on data, the software can accurately detect objects based on these inputted labels.

**Text detection —** Many image recognition tools recognize text and can translate it into a machine readable format.

**Facial recognition —** Takes an image of a face and provides the identity of the individual as an output.

**Inappropriate content detection —** Allows images and videos to be moderated by identifying potentially inappropriate or unsafe content.

Other features of image recognition software include: [APIs &amp; SDKs](https://www.g2.com/categories/image-recognition/f/apis-sdks), [Machine Learning Libraries &amp; Frameworks](https://www.g2.com/categories/image-recognition/f/machine-learning-libraries-frameworks), [On Device &amp; Edge](https://www.g2.com/categories/image-recognition/f/on-device-edge), [Operations](https://www.g2.com/categories/image-recognition/f/operations), [Platform](https://www.g2.com/categories/image-recognition/f/platform), [Retail](https://www.g2.com/categories/image-recognition/f/retail), and [Security](https://www.g2.com/categories/image-recognition/f/security).

### Trends Related to Image Recognition Software

With image recognition capabilities, the user has the ability to understand the images and glean insights from them. There are a few key trends driving this.

**Machine learning —** Without machine learning, or the ability for computers to discover patterns in data and as a result to come up with actionable insights, image recognition would be naught. The improvement and advancement of machine learning directly correlates to the success of image recognition.

**Image search —** As previously mentioned, text is not the only way users can query data and search for what they are looking for. With image search, powered by image recognition, users can snap a picture of an object, and receive actionable insights, product recommendations, and more.

### Potential Issues with Image Recognition Software

**Plan for adoption —** At the start, image recognition tools may not seem valuable to all employees—end users might struggle to adopt the solutions. Therefore, it’s important for companies to have a plan in place to encourage and promote user adoption.

**Time to market —** As with any software implementation, it’s important to think about how long it will take to implement. It’s important to consider related software that a company might need, such as [data integration software](https://www.g2.com/categories/data-integration).

**Data security —** Don’t make data security an afterthought. Companies must consider security options to ensure the correct users see the correct data. They must also have security options that allow administrators to assign verified users different levels of access to the platform.

**Image manipulation —** The rise of advanced computer vision algorithms has seen an increased risk of advanced image manipulation such as deepfakes. Using techniques such as Generative Adversarial Networks, bad actors can create lifelike videos and images, that are almost indistinguishable from the real thing.

### Software and Services Related to Image Recognition Software

The following solutions can be used in conjunction with the products in this category to make the most comprehensive reports possible.

[**Application development software**](https://www.g2.com/categories/application-development) **—** Image recognition tools can be used alongside application development tools to create computer vision-infused solutions. Developers typically use some sort of [application development software](https://www.g2.com/categories/application-development), such as [mobile development software](https://www.g2.com/categories/mobile-development) or [rapid application development (RAD) software](https://www.g2.com/categories/rapid-application-development-rad) to incorporate these image recognition capabilities.

[**Storage management software**](https://www.g2.com/categories/storage-management) **—** There are a plethora of solutions for storing, organizing, and sharing large amounts of data to be accessed and analyzed later by image recognition tools. This includes everything from [object storage software](https://www.g2.com/categories/object-storage) to industry-specific solutions like [vendor-neutral archives (VNA) software](https://www.g2.com/categories/vendor-neutral-archives-vna) for health care.

[**E-commerce software**](https://www.g2.com/categories/e-commerce) **—** [E-commerce platforms](https://www.g2.com/categories/e-commerce-platforms) and businesses utilize image recognition to improve search capabilities and connect different products to one another based on how they look. For example, [product information management (PIM) tools](https://www.g2.com/categories/product-information-management-pim) are a set of processes and tools that centralize and manage an e-commerce business’s product information, can be leveraged to power computer vision algorithms. An online business looking to offer personalized content or search results to the consumer can use a combination of [e-commerce personalization software](https://www.g2.com/categories/e-commerce-personalization) with image recognition to provide that personalized touch.

[**Health care software**](https://www.g2.com/categories/health-care) **—** Medical professionals can benefit from image recognition technology, leveraging it to make meaning from medical images. For example, [radiology software](https://www.g2.com/categories/radiology), which is used for managing medical imaging activities, can greatly benefit from image recognition software since it provides physicians with more powerful tools for diagnosis. In addition, [clinical documentation software](https://www.g2.com/categories/clinical-documentation) might be related, if some of the information and data shared and stored between medical professionals is image-related.

[**Optical character recognition (OCR) software**](https://www.g2.com/categories/ocr) **—** OCR software, also called document capture software, is designed to scan various types of documents, process the content within those documents, and extract actionable data.



---
## What Are the Most Common Questions About Image Recognition Software?
*AI-generated · Last updated: June  3, 2026*
### Image Recognition solutions trusted by Technology / AI organizations for critical workflows
According to verified users, trusted image recognition solutions for critical workflows are valued for reducing manual data preparation, speeding model iteration, and keeping annotation, dataset versioning, augmentation, training, and deployment steps in one place. Recent reviewers repeatedly highlight ease of use, fast setup, collaboration for labeling teams, and export flexibility into common development environments. Buyers in technology and AI settings also mention the importance of dependable support, reliable handling of large image sets, and workflows that help teams move from raw images to usable models without stitching together multiple tools. The strongest trust signals in these reviews come from repeatable data preparation, cleaner experimentation, and faster movement into production or research use cases.


### Which Image Recognition solutions minimize implementation risks and support smooth adoption that support critical workflow requirements
Based on G2 reviews, these image recognition products are most often described as easier to adopt and operationalize.

- [Roboflow](https://www.g2.com/products/roboflow) — annotation, versioning, training, and export.
- [Kwikpic](https://www.g2.com/products/kwikpic) — face recognition for photo delivery.
- [Claude](https://www.g2.com/products/claude-2025-12-11) — image analysis for mixed workflows.
- [Clarifai](https://www.g2.com/products/clarifai) — quick testing with prebuilt vision models.


### Image Recognition solutions with straightforward integration into existing tech stacks that support critical workflow requirements
According to verified users, straightforward integration in image recognition software usually means less custom plumbing between annotation, model training, export, and deployment. Recent reviewers describe value in tools that connect cleanly to notebooks, cloud environments, edge devices, browsers, or photo delivery workflows without forcing teams to rebuild pipelines from scratch. They also mention exports to common formats, API access, and compatibility with existing model frameworks as practical signs of easier integration. For buyers, the clearest pattern is that integration success is tied to how quickly a product fits into current data flows and operational processes while still supporting iteration, collaboration, and production handoff across technical teams.


### What are the most important features in image recognition software
G2 reviewers mention that the most important features in image recognition software center on data preparation, automation, and deployment readiness. Across recent reviews, recurring priorities include image annotation and labeling tools, dataset versioning, preprocessing and augmentation, export into multiple formats, auto-labeling assistance, collaboration for teams, and model training or inference support. Buyers also care about usability, especially for beginners or mixed technical teams, because faster onboarding shortens time to value. Other commonly mentioned needs include handling large datasets, integration with notebooks or existing environments, and support for quality control during labeling. In practice, reviewers favor products that reduce manual workflow steps while keeping experimentation, iteration, and deployment manageable.


### How do teams use Image Recognition for annotation and dataset versioning
According to verified users, teams use image recognition workflows for annotation and dataset versioning to make visual data preparation more consistent, collaborative, and repeatable. Recent reviews describe teams labeling images together, organizing projects into dataset versions, applying preprocessing and augmentation steps, and then exporting the resulting data into the training format they need. This helps reduce manual rework when experiments change or when multiple contributors are involved. Reviewers also note that versioning is especially useful for comparing training runs, maintaining clean splits, and tracking how data changes affect outcomes. For buyers, this workflow matters because it turns image preparation from a fragmented process into a more manageable system for iteration and quality control.



