A Human Intruder Detection System for Restricted Sensitive Areas

N. Chandra, S. Panda
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Abstract

The development of an automated intruder detection system for restricted sensitive areas or unattended border areas is a major concern for national security perspective to avoid illegal entries of outsiders to those areas. Due to the larger radius of those areas, it is quite difficult to keep track of the activities through a manual human tracking process at regular intervals for periodic monitoring. Also, the safety of the people involved in the manual supervision process by visiting the sites is of major concern while no prior information is available on any intruder already entered that place. This work focuses on the development of an automatic human intruder detection system that can detect illegal entries of humans in restricted areas and can report to the control room in time. The model presented uses the YOLO Model to detect human objects in videos captured by cameras with some standard resolution. A number of experiments were conducted to evaluate the performance of the model under different contexts. The results obtained show the efficiency of the model in detecting human objects over other objects in the captured videos with an accuracy of approximately 96% in the considered environmental conditions.
一种限制敏感区域的人类入侵检测系统
在限制敏感地区或无人值守的边境地区开发入侵者自动检测系统是国家安全角度的一个重要问题,以防止外人非法进入这些地区。由于这些区域的半径较大,很难通过人工跟踪过程定期跟踪活动以进行定期监测。此外,在没有任何已经进入该地点的入侵者的事先信息的情况下,通过访问现场参与人工监督过程的人员的安全是主要关注的问题。本工作的重点是开发一种人闯入者自动检测系统,该系统可以检测到禁区内的人非法进入并及时向控制室报告。该模型使用YOLO模型来检测某些标准分辨率摄像机拍摄的视频中的人体目标。进行了大量的实验来评估模型在不同环境下的性能。得到的结果表明,在考虑的环境条件下,该模型在检测捕获的视频中人体物体比其他物体的效率更高,准确率约为96%。
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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