利用室内监控摄像头进行刀具检测

Yoshemart Amador-Salgado, J. Padilla-Medina, F. Pérez-Pinal, A. Barranco-Gutiérrez, M. Rodríguez-Licea, Juan J. Martinez-Nolasco
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引用次数: 1

摘要

安全是世界各地城市不断需要解决的问题,如何探测威胁人类的武器是一个重要的挑战。提出了一种解决闭路电视(CCTV)摄像机视频中刀具检测问题的方法。从这个意义上说,刀检测是本工作的目标,通过结合颜色和不变矩技术,所呈现的系统达到了目标,并且在室内环境中变得可靠,无论是否有环境照明。这项工作已经在白色和红外线照明下得到了证明,从相机到刀的距离在0.5到4.0米之间,具有积极的检测质量。为了支持这项工作,视频被上传到了网络上。其中报告的误差从0%到1.192%不等。本系统适用于便利店、银行、剧院等距离较远、有商业监控摄像头的公共场所。结果提供了一个简单的分类,因为发现了重要的特征。例如,当系统可以通过并行处理器或流水线方式执行时,它可能会在现场检测到不止一把刀。
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Knife Detection using Indoor Surveillance Camera
Security and safeness are constant topics to be solved in cities around the world, finding ways to detect weapons threatening human beings is an important challenge. This paper presents an approach for solving knife detection in Close Circuit Television (CCTV) cameras videos. In this sense, knife detection is the goal in this work and through a combination of color and invariant moments techniques, the system presented reaches the objective and turns reliable in indoor environments, with or without environmental illumination. The work has been proved under white and infrared lighting, with a range between 0.5 to 4.0 meters of distance from camera to knives with positive qualities of detection. Supporting this work, videos were uploaded on web. The reported error in them runs from 0% to 1.192%. This system may be useful at convenience stores, banks, theatres and some others public places with commercial surveillance cameras from a relatively long distance. Results offer a simple classification because to important features found. For instance, when the system may be executed by parallel processors or in pipeline method it could be detecting more than one knife on scene.
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