首页> 外文会议>2009 IEEE 12th International Conference on Computer Vision (ICCV 2009) >Modelling activity global temporal dependencies using Time Delayed Probabilistic Graphical Model
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Modelling activity global temporal dependencies using Time Delayed Probabilistic Graphical Model

机译:使用时间延迟概率图形模型对活动全局时间依存关系建模

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摘要

We present a novel approach for detecting global behaviour anomalies in multiple disjoint cameras by learning time delayed dependencies between activities cross camera views. Specifically, we propose to model multi-camera activities using a Time Delayed Probabilistic Graphical Model (TD-PGM) with different nodes representing activities in different semantically decomposed regions from different camera views, and the directed links between nodes encoding causal relationships between the activities. A novel two-stage structure learning algorithm is formulated to learn globally optimised time-delayed dependencies. A new cumulative abnormality score is also introduced to replace the conventional log-likelihood score for gaining significantly more robust and reliable real-time anomaly detection. The effectiveness of the proposed approach is validated using a camera network installed at a busy underground station.
机译:我们提出了一种通过学习跨摄像机视图的活动之间的时间延迟依赖关系来检测多个不相交的摄像机中的全局行为异常的新颖方法。具体来说,我们建议使用时间延迟概率图形模型(TD-PGM)为多机位活动建模,其中不同节点表示来自不同机位视图的不同语义分解区域中的活动,节点之间的有向链接编码活动之间的因果关系。制定了一种新颖的两阶段结构学习算法,以学习全局优化的时间延迟依存关系。还引入了新的累积异常评分,以取代常规的对数似然评分,从而获得更强大,更可靠的实时异常检测。通过在繁忙的地铁站安装摄像头网络来验证所提出方法的有效性。

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