监控视频异常定位技术测量性能的局限性及如何克服?

M. Sharma, S. Sarcar, D. Sheet, P. Biswas
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引用次数: 2

摘要

如今,由于全球安全问题以及对公共场所有效监控的需求日益增加,视频监控越来越受欢迎。视频监控的关键目标是检测可疑或异常行为。为了发现视频中的异常情况,已经做出了各种努力。除了这些进步之外,还需要更好的技术来评估视频监控中的异常定位。现有的方法主要采用与真值40%重叠的规则,没有将额外的预测区域考虑到计算中。现有的指标已被发现是不准确的,当超过一个区域出现在框架内,可能或可能不被正确定位或标记为异常。这项工作试图弥补现有度量标准中的这些限制。在本文中,我们研究了三个现有的度量标准,并讨论了它们在评估视频异常定位方面的优点和局限性。我们通过引入惩罚函数进一步扩展了现有的工作,并用足够数量的实例证实了所提出指标的有效性。给出的度量在数据(35种不同的情况)上进行验证,其中重叠已被分析计算。
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Limitations with measuring performance of techniques for abnormality localization in surveillance video and how to overcome them?
Now a days video surveillance is becoming more popular due to global security concerns and with the increasing need for effective monitoring of public places. The key goal of video surveillance is to detect suspicious or abnormal behavior. Various efforts have been made to detect an abnormality in the video. Further to these advancements, there is a need for better techniques for evaluation of abnormality localization in video surveillance. Existing technique mainly uses forty percent overlap rule with ground-truth data, and does not considers the extra predicted region into the computation. Existing metrics have been found to be inaccurate when more than one region is present within the frame which may or may not be correctly localized or marked as abnormal. This work attempts to bridge these limitations in existing metrics. In this paper, we investigate three existing metrics and discuss their benefits and limitations for evaluating localization of abnormality in video. We further extend the existing work by introducing penalty functions and substantiate the validity of proposed metrics with a sufficient number of instances. The presented metric are validated on data (35 different situations) for which the overlap has been computed analytically.
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