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Point-Placement Techniques and Temporal Self-Similarity Maps for Visual Analysis of Surveillance Videos

机译:点布置技术和时间自相似图用于监视视频的视觉分析

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摘要

The manual analysis of surveillance videos is unfeasible due to the excessive amount of data, the associated subjectivity, or the eventual presence of distracting noise. Automatic summarization approaches provide littleo user interaction, limiting his/her comprehension regarding the involved phenomena. Visual analytics techniques represent a potential tool for such analysis, providing video representations that clearly communicate their content, potentially revealing patterns that may represent events of interest. In this paper, we present a methodology for visual analysis of surveillance video that combines point-placement techniques and Temporal Self-similarity Maps (TSSMs) to reveal the events occurrence structure and to enhance the comprehension of their temporal properties. Experiments in several surveillance scenarios demonstrate that our proposed methodology provides an effective events summarization and the exploration of both the structure of each event and the relationship among them, allowing the security agent to filter/explore those that represent potential alert situations.
机译:由于过多的数据量,相关的主观性或最终会分散干扰,因此无法对监视视频进行手动分析。自动汇总方法几乎没有/没有用户交互,从而限制了他/她对所涉及现象的理解。视觉分析技术代表了进行此类分析的潜在工具,可提供清晰传达其内容的视频表示形式,并可能揭示可能表示感兴趣事件的模式。在本文中,我们提出了一种监视视频的可视化分析方法,该方法结合了点放置技术和时间自相似图(TSSM)来揭示事件发生的结构并增强其时间属性的理解。在多个监视场景中进行的实验表明,我们提出的方法可提供有效的事件摘要,并探索每个事件的结构以及它们之间的关系,从而使安全代理可以筛选/探索代表潜在警报情况的事件。

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