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Generalised Spatio Temporal Feature Based Important Activity Synopsis Generation

机译:基于广义时空特征的重要活动提要生成

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Traditional video analysis methods can generate summary of day's long videos. While generating synopsis video maintaining the motion structure of important activities present in a video sequence is of great concern in research communities and industry. In this paper, we present an automatic and scalable approach for automatic detection of important activities in a video based on different spatiotemporal criteria used as a signature. To maintain the important context cues we propose an online motion structure preserved synopsis approach, which can retain the behavior interactions between different objects in an original video while condensing as much content as possible. A hierarchical fashion is employed to efficiently search important activities present in a video sequence, and generating synopsis video of those important activities in which both the spatial collision and the temporal consistency are considered. Experimental results on numerous (six) video sequences demonstrate the promise of the proposed approach.
机译:传统的视频分析方法可以生成一天的长视频摘要。在生成概要视频时,保持视频序列中存在的重要活动的运动结构在研究社区和行业中引起极大关注。在本文中,我们提出了一种自动且可扩展的方法,用于根据用作签名的不同时空标准自动检测视频中的重要活动。为了保持重要的上下文线索,我们提出了一种在线运动结构保留的提要方法,该方法可以保留原始视频中不同对象之间的行为交互,同时压缩尽可能多的内容。采用分层方式来有效地搜索视频序列中存在的重要活动,并生成考虑了空间冲突和时间一致性的那些重要活动的概要视频。在众多(六个)视频序列上的实验结果证明了该方法的前景。

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