Coupled Hidden Semi Markov Models for Activity Recognition


Recognizing human activity from a stream of sensory observations is important for a number of applications such as surveillance and human-computer interaction. Hidden Markov Models (HMMs) have been proposed as suitable tools for modeling the variations in the observations for the same action and for discriminating among different actions. HMMs have come in… (More)


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