基于活动主题的多摄像机视频摘要与异常检测

C. D. Leo, B. S. Manjunath
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引用次数: 26

摘要

摄像机网络系统产生大量潜在有用的数据,但从多个相关视频中提取价值对于人类审查员来说可能是一项艰巨的任务。多摄像机视频摘要通过生成一组精简的输出摘要视频,简明地捕获输入集的重要部分,力求使这项任务更易于处理。我们提出了一个系统,该系统在检测到的活动主题的水平上接近总结,并通过压缩单个活动的表示来缩短输入视频。此外,通过从汇总活动事件中省略可以由其他事件预测的事件,可以跨摄像机视图消除冗余。系统还可以在统一的框架内检测异常事件,并在摘要中突出显示。我们的贡献是一种使用活动主题选择活动的有用部分呈现给观众的方法,以及一种新的框架来对活动发生的重要性进行评分,并允许在不解决对应问题的情况下在时间相关的活动之间转移重要性。我们提供了一个双摄像机网络,一个11摄像机网络的总结结果,以及来自PETS 2001的数据。我们还包括了亚马逊土耳其机器人人体实验的结果,以评估我们的可视化决策如何影响任务表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multicamera video summarization and anomaly detection from activity motifs
Camera network systems generate large volumes of potentially useful data, but extracting value from multiple, related videos can be a daunting task for a human reviewer. Multicamera video summarization seeks to make this task more tractable by generating a reduced set of output summary videos that concisely capture important portions of the input set. We present a system that approaches summarization at the level of detected activity motifs and shortens the input videos by compacting the representation of individual activities. Additionally, redundancy is removed across camera views by omitting from the summary activity occurrences that can be predicted by other occurrences. The system also detects anomalous events within a unified framework and can highlight them in the summary. Our contributions are a method for selecting useful parts of an activity to present to a viewer using activity motifs and a novel framework to score the importance of activity occurrences and allow transfer of importance between temporally related activities without solving the correspondence problem. We provide summarization results for a two camera network, an eleven camera network, and data from PETS 2001. We also include results from Amazon Mechanical Turk human experiments to evaluate how our visualization decisions affect task performance.
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