Vision Based Hand Gesture Recognition
Abstract:
This paper proposes a two level approach to solve the problem
of real-time vision-based hand gesture classification. The lower level of the
approach implements the posture recognition with Haar-like features and the
AdaBoost learning algorithm. With this algorithm, real-time performance and
high recognition accuracy can be obtained. The higher level implements the
linguistic hand gesture recognition using a context-free grammar-based
syntactic analysis. Given an input gesture, based on the extracted postures,
the composite gestures can be parsed and recognized with a set of primitives
and production rules
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