Extension of hidden Markov models to deal with multiple candidates of observations and its application to mobile-robot-oriented gesture recognition

We propose a modified hidden Markov model (HMM) with a view to improving gesture recognition in the moving camera condition. We define a new gesture recognition framework in which multiple candidates of feature vectors are generated with confidence measures and the HMM is extended to deal with these multiple feature vectors. Experimental analysis comparing the proposed system with feature vectors based on DCT and the method of selecting only one candidate feature point verifies the effectiveness of the technique.

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