Robust real-time unusual event detection using multiple fixed-location monitors.

IEEE Transactions on Pattern Analysis and Machine Intelligence(2008)

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摘要
We present a novel algorithm for detection of certain types of unusual events. The algorithm is based on multiple local monitors which collect low-level statistics. Each local monitor produces an alert if its current measurement is unusual, and these alerts are integrated to a final decision regarding the existence of an unusual event. Our algorithm satisfies a set of requirements that are critical for successful deployment of any large-scale surveillance system. In particular it requires a minimal setup (taking only a few minutes) and is fully automatic afterwards. Since it is not based on objects' tracks, it is robust and works well in crowded scenes where tracking-based algorithms are likely to fail. The algorithm is effective as soon as sufficient low-level observations representing the routine activity have been collected, which usually happens after a few minutes. Our algorithm runs in realtime. It was tested on a variety of real-life crowded scenes. A ground-truth was extracted for these scenes, with respect to which detection and false-alarm rates are reported.
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关键词
novel algorithm,real-life crowded scene,unusual event detection,video analysis,statistical analysis,tracking-based algorithm,low-level statistics,robust real-time unusual event,low-level statistic,local monitor,multiple local monitor,unusual event,crowded scene,multiple fixed-location monitors,sufficeint low-level observation,object detection,computer vision,certain type,large-scale surveillance system,video surveillance,layout,real time,algorithm design and analysis,ground truth,photography,satisfiability,feature extraction,artificial intelligence,false alarm rate,statistics,algorithms,robustness
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