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A Practical Person Monitoring System for City Security

机译:实用的城市安全人员监控系统

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摘要

Recent progress in Deep Learning(DL) has brought many breakthroughs with incredible performance, which have not been achieved with traditional machine learning algorithms. In computer vision, DL-based methods have started to outperform humans in certain tasks and are going to impact our daily lives. We present our case study of an implementation and evaluation of our prototype real-time person-monitoring system using cutting-edge DL computer vision techniques. We used a fast and lightweight stream-processing engine for its flexibility and portability, packaged all of DL software stacks as docker containers for portability and ease of deployment, and evaluated our prototype's performance using realistic scenarios in which one hundred camera streams are gathered at centered GPU servers. We confirmed that our prototype system can monitor one hundred video streams in real-time. We also report lessons learned through our prototype implementation and discuss the future direction of person monitoring.
机译:深度学习(DL)的最新进展带来了许多令人难以置信的性能突破,这是传统机器学习算法无法实现的。在计算机视觉中,基于DL的方法在某些任务上已经开始超越人类,并将影响我们的日常生活。我们介绍了使用先进的DL计算机视觉技术对原型实时人员监控系统的实施和评估的案例研究。我们使用快速,轻量级的流处理引擎来实现灵活性和可移植性,将所有DL软件堆栈打包为docker容器,以实现可移植性和易于部署,并使用实际场景评估了原型的性能,其中以一百个相机流集中为中心GPU服务器。我们确认我们的原型系统可以实时监控一百个视频流。我们还将报告通过原型实施获得的经验教训,并讨论人员监控的未来方向。

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