以隐私为中心的个人身份再识别的嵌入式平台方法

Nicholas Pym, A. D. Freitas
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引用次数: 1

摘要

能够在封闭区域入口处智能监控人员流量的系统可以实现各种有用的应用,例如改进零售商店分析。然而,这种系统在现实世界中的实现通常会受到计算成本高昂的算法和隐私问题的阻碍。本文提出了一种基于嵌入式平台的低成本隐私敏感智能监控系统。该系统的关键组件包括人员分类模型和人员再识别模型。详细描述了这些组件的优化。开发的系统能够实时检测进出封闭区域的人员,准确率超过99%。此外,在嵌入式系统上,该系统能够在0.7秒内实现93%以上的再识别精度。该系统收集的数据用于训练,并在实际条件下进行了测试。
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An embedded platform approach to privacy-centric person re-identification
Systems capable of intelligently monitoring the traffic of people at entrances to enclosed areas enable a variety of useful applications such as improved retail store analytics. However, the real-world implementation of such a system is typically hindered by computationally expensive algorithms and privacy concerns. In this paper, a low-cost privacy-sensitive intelligent monitoring system based on an embedded platform is presented. The key components of the system include a people classification model and a people re-identification model. A detailed description of the optimisation of these components is presented. The developed system is able to detect people entering/exiting a closed area with an accuracy above 99% in real-time. In addition, the system is able to achieve re-identification accuracy above 93% in under 0.7 seconds on an embedded system. Data collected by the system was used for training and it was tested under real-world conditions.
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