Position-invariant, real-time gesture recognition based on dynamic time warping
Saša Bodiroža, Guillaume Doisy, Verena V. Hafner
- 发表年份
- 2013
- 引用次数
- 25
摘要
To achieve an improved human-robot interaction it is necessary to allow the human participant to interact with the robot in a natural way. In this work, a gesture recognition algorithm, based on dynamic time warping, was implemented with a use-case scenario of natural interaction with a mobile robot. Inputs are gesture trajectories obtained using a Microsoft Kinect sensor. Trajectories are stored in the person's frame of reference. Furthermore, the recognition is position-invariant, meaning that only one learned sample is needed to recognize the same gesture performed at another position in the gestural space. In experiments, a set of gestures for a robot waiter was used to train the gesture recognition algorithm. The experimental results show that the proposed modifications of the standard gesture recognition algorithm improve the robustness of the recognition.
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