Self-Learning pLSA Model for Abnormal Behavior Detection in Crowded Scenes

Shuoyan LIU, Enze YANG, Kai FANG
2021 IEICE transactions on information and systems  
Abnormal behavior detection is now a widely concerned research field, especially for crowded scenes. However, most traditional unsupervised approaches often suffered from the problem when the normal events in the scenario with large visual variety. This paper proposes a selflearning probabilistic Latent Semantic Analysis, which aims at taking full advantage of the high-level abnormal information to solve problems. We select the informative observations to construct the "reference events" from
more » ... e training sets as a high-level guidance cue. Specifically, the training set is randomly divided into two separate subsets. One is used to learn this model, which is defined as the initialization sequence of "reference events". The other aims to update this model and the the infrequent samples are chosen into the "reference events". Finally, we define anomalies using events that are least similar to "reference events". The experimental result demonstrates that the proposed model can detect anomalies accurately and robustly in the real-world crowd environment. key words: video surveillance, abnormal behavior detection, action transfer rules, pLSA
doi:10.1587/transinf.2020edl8115 fatcat:j76ovzoqwzbp5mhd7ns5diynle