自动识别监控录像中的枪支

M. Grega, Seweryn Lach, Radoslaw Sieradzki
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引用次数: 19

摘要

在工作场所、城市地区和几乎所有公共场所都部署了闭路电视监控系统。CCTV视频流的数量超过了人类操作员仔细观察和分析潜在危险情况的能力,例如“活跃枪手事件”。像在科罗拉多州(美国)或奥斯陆(挪威)的电影院发生的悲剧这样的事件需要立即作出反应。在本文中,我们提出并测试了一种算法,该算法能够检测携带未暴露枪支的人并向CCTV操作员发出潜在危险情况的警报。我们提出了这种图像分析应用的局限性和困难,讨论了所提出算法的结构,并在灵敏度和特异性方面展示了数值结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated recognition of firearms in surveillance video
CCTV surveillance systems are being deployed in workplaces, urban areas and almost every public space. The number of CCTV video streams surpasses the ability of a human operator to watch and analyse the situation carefully with respect to potentially dangerous situations, such as “Active Shooter Events”. Such events as the tragedy in the movie theatre in Colorado (USA) or Oslo (Norway) require an immediate response. In this paper, we propose and benchmark an algorithm that is capable of detecting a person carrying an uncovered firearm and alerting the CCTV operator of a potentially dangerous situation. We present the limitations and difficulties for such an image analysis application, discuss the construction of the proposed algorithm, and show the numerical results in terms of sensitivity and specificity.
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