Visible to the public Biblio

Filters: Author is Songqing Zhao  [Clear All Filters]
2015-05-01
Hong Jiang, Songqing Zhao, Zuowei Shen, Wei Deng, Wilford, P.A., Haimi-Cohen, R..  2014.  Surveillance video analysis using compressive sensing with low latency. Bell Labs Technical Journal. 18:63-74.

We propose a method for analysis of surveillance video by using low rank and sparse decomposition (LRSD) with low latency combined with compressive sensing to segment the background and extract moving objects in a surveillance video. Video is acquired by compressive measurements, and the measurements are used to analyze the video by a low rank and sparse decomposition of a matrix. The low rank component represents the background, and the sparse component, which is obtained in a tight wavelet frame domain, is used to identify moving objects in the surveillance video. An important feature of the proposed low latency method is that the decomposition can be performed with a small number of video frames, which reduces latency in the reconstruction and makes it possible for real time processing of surveillance video. The low latency method is both justified theoretically and validated experimentally.