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A novel probabilistic approach utilizing clip attribute as hidden knowledge for event recognition

机译:一种新颖的概率方法,利用片段属性作为事件识别的隐藏知识

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This paper proposes a novel probabilistic approach to utilize clip attributes as hidden knowledge for event recognition. Event recognition in surveillance videos is very challenging due to its large intra-class variations and relative low image resolution. The clip attributes, that are available only during training, provide auxiliary hidden information about the variation of the event appearance. Utilizing such hidden knowledge can help better model the joint probability distribution between event and its observations, and thus improve the recognition performance. We propose a probabilistic model to systematically incorporate the clip attributes into the event recognition. Experiments on real surveillance data show improved event recognition performance with the use of the clip attributes.
机译:本文提出了一种新颖的概率方法,利用片段属性作为事件识别的隐性知识。监视视频中的事件识别由于类内差异较大且图像分辨率相对较低而非常具有挑战性。剪辑属性仅在训练期间可用,提供有关事件外观变化的辅助隐藏信息。利用这种隐藏的知识可以帮助更好地模拟事件及其观测值之间的联合概率分布,从而提高识别性能。我们提出了一种概率模型,将片段属性系统地整合到事件识别中。实际监视数据的实验表明,使用剪辑属性可以提高事件识别性能。

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