用于零售闭路电视摄像机的人员计数系统

Meygen D. Cruz, J. Keh, Ramiel G. Deticio, Carl Vincent T. Tan, John Anthony C. Jose, E. Dadios
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引用次数: 0

摘要

本文的重点是实现一个基于视觉的人员计数系统的可行性,该系统使用现有的餐馆监控摄像头的镜头。主要的挑战是要做到这一点,因为摄像头的独特固定视角是为了安全而不是数据分析而优化的。在创建该系统时采用了三步方法,即人员检测,跟踪,然后计数。使用YOLOv3和Deep SORT等神经网络。支持者随后与一个繁忙商业区的一家零售机构合作,对该系统进行测试。结果表明,在餐厅等候区不拥挤的情况下,准确率可以达到82.76%。在为期五天的广泛测试中,该系统还实现了66.17%的总体准确率,包括视频中人物密集和闭塞的极端条件。然而,系统的性能和精度仍然可以通过缩小框架、重新训练模型和探索其他模型来提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A People Counting System for Use in CCTV Cameras in Retail
This paper focuses on the feasibility of implementing a vision-based people counting system using footage from an existing surveillance camera in a restaurant establishment. The main challenge is to do so given the unique fixed viewpoint of the camera, which is optimized for security instead of data analytics. A three-step approach, namely people detection, tracking, and then people counting, is employed in creating the system. Neural networks such as YOLOv3 and Deep SORT are used. The proponents then partnered with a retail establishment in a high-traffic business district, to test the system. The results show that it is possible to achieve an accuracy of 82.76% for days when the restaurant waiting area is not crowded. The system also achieved an overall accuracy of 66.17% over five days of extensive testing, which includes extreme conditions wherein people in the video are densely packed and occluded. However, the system performance and accuracy can still be improved through downsizing the frames, retraining the models, and exploring other models.
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