Dynamic Hand Gesture Recognition for Robot Manipulator Tasks
Dharmendra Sharma, Peeyush Thakur, Sandeep Gupta, Narendra Kumar Dhar, Laxmidhar Behera
- Year
- 2026
- Access
- Open access
Abstract
This paper proposes a novel approach to recognizing dynamic hand gestures facilitating seamless interaction between humans and robots. Here, each robot manipulator task is assigned a specific gesture. There may be several such tasks, hence, several gestures. These gestures may be prone to several dynamic variations. All such variations for different gestures shown to the robot are accurately recognized in real-time using the proposed unsupervised model based on the Gaussian Mixture model. The accuracy during training and real-time testing prove the efficacy of this methodology.
Keywords
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