Reduction of false alarms triggered by spiders/cobwebs in surveillance camera networks

R. Hebbalaguppe, Kevin McGuinness, J. Kuklyte, Rami Albatal, C. Direkoğlu, N. O’Connor
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引用次数: 2

Abstract

The percentage of false alarms caused by spiders in automated surveillance can range from 20-50%. False alarms increase the workload of surveillance personnel validating the alarms and the maintenance labor cost associated with regular cleaning of webs. We propose a novel, cost effective method to detect false alarms triggered by spiders/webs in surveillance camera networks. This is accomplished by building a spider classifier intended to be a part of the surveillance video processing pipeline. The proposed method uses a feature descriptor obtained by early fusion of blur and texture. The approach is sufficiently efficient for real-time processing and yet comparable in performance with more computationally costly approaches like SIFT with bag of visual words aggregation. The proposed method can eliminate 98.5% of false alarms caused by spiders in a data set supplied by an industry partner, with a false positive rate of less than 1%.
减少监控摄像机网络中蜘蛛/蜘蛛网引发的误报
在自动监控中,蜘蛛引起的误报百分比可以在20-50%之间。虚警增加了监控人员验证虚警的工作量,也增加了定期清理网络的维护人力成本。我们提出了一种新颖的、经济有效的方法来检测监控摄像机网络中蜘蛛/网触发的假警报。这是通过构建一个蜘蛛分类器来实现的,该分类器旨在成为监控视频处理管道的一部分。该方法利用模糊和纹理的早期融合得到的特征描述符。该方法对于实时处理足够有效,但在性能上可与计算成本更高的方法相媲美,例如具有视觉单词聚合包的SIFT。在行业合作伙伴提供的数据集中,提出的方法可以消除98.5%的蜘蛛引起的误报,误报率小于1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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