articleJan 2, 2003Closed access
Recognizing human action in time-sequential images using hidden Markov model
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Abstract
A human action recognition method based on a hidden Markov model (HMM) is proposed. It is a feature-based bottom-up approach that is characterized by its learning capability and time-scale invariability. To apply HMMs, one set of time-sequential images is transformed into an image feature vector sequence, and the sequence is converted into a symbol sequence by vector quantization. In learning human action categories, the parameters of the HMMs, one per category, are optimized so as to best describe the training sequences from the category. To recognize an observed sequence, the HMM which best matches the sequence is chosen. Experimental results for real time-sequential images of sports scenes show recognition…
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Topics
Keywords
- Hidden Markov model
- Artificial intelligence
- Sequence (biology)
- Computer science
- Pattern recognition (psychology)
- Feature (linguistics)
- Vector quantization
- Feature vector
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