Grega Michał, Matiolański Andrzej, Guzik Piotr, Leszczuk Mikołaj
AGH University of Science and Technology, al. Mickiewicza 30, Krakow 30-059, Poland.
Sensors (Basel). 2016 Jan 1;16(1):47. doi: 10.3390/s16010047.
Closed circuit television systems (CCTV) are becoming more and more popular and are being deployed in many offices, housing estates and in most public spaces. Monitoring systems have been implemented in many European and American cities. This makes for an enormous load for the CCTV operators, as the number of camera views a single operator can monitor is limited by human factors. In this paper, we focus on the task of automated detection and recognition of dangerous situations for CCTV systems. We propose algorithms that are able to alert the human operator when a firearm or knife is visible in the image. We have focused on limiting the number of false alarms in order to allow for a real-life application of the system. The specificity and sensitivity of the knife detection are significantly better than others published recently. We have also managed to propose a version of a firearm detection algorithm that offers a near-zero rate of false alarms. We have shown that it is possible to create a system that is capable of an early warning in a dangerous situation, which may lead to faster and more effective response times and a reduction in the number of potential victims.
闭路电视系统(CCTV)越来越受欢迎,并被部署在许多办公室、住宅区和大多数公共场所。许多欧美城市都已实施监控系统。这给闭路电视操作员带来了巨大的负担,因为单个操作员能够监控的摄像头画面数量受到人为因素的限制。在本文中,我们专注于闭路电视系统危险情况的自动检测和识别任务。我们提出了能够在图像中出现枪支或刀具时提醒操作员的算法。我们致力于限制误报数量,以便该系统能够在现实生活中应用。刀具检测的特异性和灵敏度明显优于最近发表的其他同类检测。我们还成功提出了一个枪支检测算法版本,其误报率几乎为零。我们已经证明,有可能创建一个能够在危险情况下进行早期预警的系统,这可能会带来更快、更有效的响应时间,并减少潜在受害者的数量。