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Activity Prediction Based on Spatiotemporal Model in a Multiple Cameras Network

机译:多时相网络中基于时空模型的活动预测

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This paper considers person re-identification issue in intelligent video surveillance systems. The problem is still difficult because of the large-scale search, especially when there are a huge amount of persons in multi-camera network. We propose a spatiotemporal model based on the statistics of space and time information for object tracking among multiple cameras. This model aims to predict the next camera views where the pedestrians will appear when they disappear from one camera view. So this model can effectively reduce the search scale. Although this model is simple but effective in a real multiple cameras network. In the experiment, it is shown that the model can effectively predict the activity of persons.
机译:本文考虑了智能视频监控系统中的人员重新识别问题。由于大规模搜索,这个问题仍然很困难,尤其是在多摄像机网络中有大量人员的情况下。我们提出了一种基于时空信息统计的时空模型,用于多个摄像机之间的对象跟踪。该模型旨在预测行人从一个摄像机视野中消失时将出现的下一摄像机视野。因此,该模型可以有效地减少搜索范围。尽管此模型很简单,但在实际的多摄像机网络中有效。实验表明,该模型可以有效预测人的活动。

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