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Incorporating contextual knowledge to Dynamic Bayesian Networks for event recognition

机译:将上下文知识整合到动态贝叶斯网络中以进行事件识别

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This paper proposes a new Probabilistic Graphical Model (PGM) to incorporate the scene, event object interaction and the event temporal contexts into Dynamic Bayesian Networks (DBNs) for event recognition in surveillance videos. We first construct the event DBNs for modeling the events from their own appearance and kinematic observations, and then extend the DBN to incorporate the contexts for boosting event recognition performance. Unlike the existing context methods, our model incorporates various contexts into one unified model. Experiments on natural scene surveillance videos show that the contexts can effectively improve the event recognition performance even with great challenges like large intra-class variations and low image resolution.
机译:本文提出了一种新的概率图形模型(PGM),该模型将场景,事件对象之间的交互作用和事件时间上下文合并到动态贝叶斯网络(DBN)中,以在监控视频中进行事件识别。我们首先构造事件DBN,以根据其自身的外观和运动学观察对事件进行建模,然后扩展DBN以合并上下文以提高事件识别性能。与现有的上下文方法不同,我们的模型将各种上下文合并到一个统一的模型中。在自然场景监视视频上进行的实验表明,即使遇到较大的类内部差异和低图像分辨率等挑战,上下文也可以有效地提高事件识别性能。

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