Smart Prison - Video Analysis for Human Action Detection

P. Law, Wang Yip Lau, Lawrence C. K. Poon, Andy WC Chung, Ken WM Lai
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Abstract

Prisons or correctional facilities require a high amount of manpower for maintaining safety whilst ensuring service quality. However, high turn-over rate (5% per year) commonly seen in these institutions often brings operational challenges, which may entail risk to safety. Prisoner’s abnormal behaviors, such as self-harming and fighting, are the major concerns posing the highest safety hazards to prisoners and front-end staff. Traditional human-dependent method used for monitoring prisoners’ abnormal behaviors is labor-intensive, and may give rise to problem such as misdetection. A Smart Prison system has been developed to assist front-end staff in detecting prisoners’ abnormal behaviors. Results shows that over 95% of the abnormal behaviors can be detected by the system. This supporting system can lower the operational pressure resulted from shortage of manpower, and reduce the rate of abnormal behavior misdetection. This will improve the safety of both front-end staff and prisoners.
智能监狱-人类行为检测的视频分析
监狱或惩教设施需要大量人手,以维持安全,并确保服务质素。然而,在这些机构中常见的高离职率(每年5%)往往带来运营挑战,这可能会带来安全风险。囚犯的异常行为,如自残和打架,是对囚犯和前端工作人员构成最大安全隐患的主要问题。传统的依赖人的方法监测犯人的异常行为,劳动强度大,容易出现误检等问题。智能监狱系统已开发,以协助前端工作人员发现囚犯的异常行为。结果表明,系统可以检测到95%以上的异常行为。该辅助系统可以降低因人力不足而造成的操作压力,降低异常行为的误检率。这将提高前线工作人员和囚犯的安全。
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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