Wang et al., 2014 - Google Patents

Detection of abnormal human behavior using a matrix approximation-based approach

Wang et al., 2014

Document ID
10583705127767741800
Author
Wang L
Dong M
Publication year
Publication venue
2014 13th International Conference on Machine Learning and Applications

External Links

Snippet

Automatic detection of abnormal events is one of central tasks in video surveillance. In this paper we present a matrix approximation-based method to detect abnormal human behavior. In our model, a behavior pattern is represented by a motion matrix obtained …
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Classifications

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