Title :
Improved anomaly detection in crowded scenes via cell-based analysis of foreground speed, size and texture
Author :
Reddy, Vikas ; Sanderson, Conrad ; Lovell, Brian C.
Author_Institution :
NICTA, St. Lucia, QLD, Australia
Abstract :
A robust and efficient anomaly detection technique is proposed, capable of dealing with crowded scenes where traditional tracking based approaches tend to fail. Initial foreground segmentation of the input frames confines the analysis to foreground objects and effectively ignores irrelevant background dynamics. Input frames are split into non-overlapping cells, followed by extracting features based on motion, size and texture from each cell. Each feature type is independently analysed for the presence of an anomaly. Unlike most methods, a refined estimate of object motion is achieved by computing the optical flow of only the foreground pixels. The motion and size features are modelled by an approximated version of kernel density estimation, which is computationally efficient even for large training datasets. Texture features are modelled by an adaptively grown code-book, with the number of entries in the codebook selected in an online fashion. Experiments on the recently published UCSD Anomaly Detection dataset show that the proposed method obtains considerably better results than three recent approaches: MPPCA, social force, and mixture of dynamic textures (MDT). The proposed method is also several orders of magnitude faster than MDT, the next best performing method.
Keywords :
feature extraction; image segmentation; image texture; motion estimation; object detection; safety; video signal processing; UCSD anomaly detection dataset; anomaly detection technique; cell based analysis; crowded scene; features extraction; foreground segmentation; foreground size; foreground speed; foreground texture; improved anomaly detection; kernel density estimation; object motion estimate; tracking based approach; Adaptation models; Computational modeling; Dynamics; Estimation; Feature extraction; Tracking; Training;
Conference_Titel :
Computer Vision and Pattern Recognition Workshops (CVPRW), 2011 IEEE Computer Society Conference on
Conference_Location :
Colorado Springs, CO
Print_ISBN :
978-1-4577-0529-8
DOI :
10.1109/CVPRW.2011.5981799