Anomaly detection and localisation in the crowd scenes using a block-based social force model

A novel approach to detect and localise anomalous events in crowed scenes by processing surveillance videos is introduced in this study. Unusual events are those that significantly differ from current dominated behaviours. The proposed approach both detects pixel-level and block-level anomalies. In pixel level, Gaussian mixture models are used to detect abnormalities. Block-level detection segments the crowd into blocks according to pedestrian detection, and then anomalies are spotted and localised with a social force model. Experimental results using the USCD datasets Ped1 and Ped2 show that the proposed method performs favourably against state-of-the-art methods.

[1]  Stuart J. Russell,et al.  Image Segmentation in Video Sequences: A Probabilistic Approach , 1997, UAI.

[2]  Dirk Helbing,et al.  Simulating dynamical features of escape panic , 2000, Nature.

[3]  Nuno Vasconcelos,et al.  Anomaly detection in crowded scenes , 2010, 2010 IEEE Computer Society Conference on Computer Vision and Pattern Recognition.

[4]  Nuno Vasconcelos,et al.  Modeling, Clustering, and Segmenting Video with Mixtures of Dynamic Textures , 2008, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[5]  Alptekin Temizel,et al.  Real-time global anomaly detection for crowd video surveillance using SIFT , 2013, ICDP.

[6]  Michal Irani,et al.  Detecting Irregularities in Images and in Video , 2005, ICCV.

[7]  Matthijs C. Dorst Distinctive Image Features from Scale-Invariant Keypoints , 2011 .

[8]  吴新宇,et al.  Hierarchical Activity Discovery within Spatio-temporal Context for Video Anomaly Detection , 2013 .

[9]  Martin D. Levine,et al.  Online Dominant and Anomalous Behavior Detection in Videos , 2013, 2013 IEEE Conference on Computer Vision and Pattern Recognition.

[10]  Ramin Mehran,et al.  Abnormal crowd behavior detection using social force model , 2009, CVPR.

[11]  Wen-Hsien Fang,et al.  Video anomaly detection and localization using hierarchical feature representation and Gaussian process regression , 2015, 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).

[12]  Kristen Grauman,et al.  Observe locally, infer globally: A space-time MRF for detecting abnormal activities with incremental updates , 2009, CVPR.

[13]  Ehud Rivlin,et al.  Robust Real-Time Unusual Event Detection using Multiple Fixed-Location Monitors , 2008, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[14]  Bill Triggs,et al.  Histograms of oriented gradients for human detection , 2005, 2005 IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR'05).