A real-time object detecting and tracking system for outdoor night surveillance

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摘要

Autonomous video surveillance and monitoring has a rich history. Many deployed systems are able to reliably track human motion in indoor and controlled outdoor environments. However, object detection and tracking at night remain very important problems for visual surveillance. The objects are often distant, small and their signatures have low contrast against the background. Traditional methods based on the analysis of the difference between successive frames and a background frame will do not work. In this paper, a novel real time object detection algorithm is proposed for night-time visual surveillance. The algorithm is based on contrast analysis. In the first stage, the contrast in local change over time is used to detect potential moving objects. Then motion prediction and spatial nearest neighbor data association are used to suppress false alarms. Experiments on real scenes show that the algorithm is effective for night-time object detection and tracking.

论文关键词:Visual surveillance,Night,Contrast,Detection and tracking

论文评审过程:Received 27 April 2006, Revised 31 March 2007, Accepted 23 May 2007, Available online 15 June 2007.

论文官网地址:https://doi.org/10.1016/j.patcog.2007.05.017