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Gesture Recognition Toolkit

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10 reviews
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Average star rating
4.7
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Gesture Recognition Toolkit Reviews

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Diana grace Q.
DQ
Diana grace Q.
Teaching Faculty at Unc
03/05/2024
Validated Reviewer
Review source: G2 invite
Incentivized Review

One of the best toolkit ever made!

I like how it is designed to work with real time sensor data and at the same time the traditional offline machine learning task. I like that it has double precision float and can easily be change to single precision, making it a very flexible tool.
Dhruvil B.
DB
Dhruvil B.
Aspiring Data Scientist | Data Analyst | Strong Analytical Abilities | Quick Learner | Recent Graduate
02/24/2024
Validated Reviewer
Verified Current User
Review source: G2 invite
Incentivized Review

The Treasure for Virtual Reality

It is mainly more programmable for C++ in which I have most of efficiency because I have learned that from the starting of my learning journey. Most of time I used this for Gaming Development In which I worked for some features of Virtual Reality.
FO
fabio O.
02/16/2024
Validated Reviewer
Review source: G2 invite
Incentivized Review

Good and revolutionary software

Perfect implementation, friendly, practical and excellent support with excellent support to the client. With frequent updates.

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What is Gesture Recognition Toolkit?

The Gesture Recognition Toolkit (GRT) is an open-source, cross-platform toolkit designed for real-time gesture recognition and machine learning applications. It is developed by Nick Gillian and is accessible on GitHub at https://github.com/nickgillian/grt. The GRT facilitates the development and implementation of gesture recognition systems by providing a range of algorithms and tools. It supports classification, regression, clustering, and more, making it suitable for a variety of interactive applications. The toolkit is written in C++ and emphasizes ease of use, modularity, and flexibility, enabling developers and researchers to implement and experiment with gesture recognition and machine learning techniques efficiently.

Details

Website
github.com