用于跟踪智能城市视频监控流中的移动目标的Federated Edge

Francesco Martella, M. Fazio, A. Celesti, Valeria Lukaj, A. Quattrocchi, M. D. Gangi, M. Villari
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引用次数: 3

摘要

如今,视频监控在智慧城市中是一种非常普遍的做法。有公共和私人视频监控系统,而且经常是不同的系统或单个设备对同一区域进行监控。然而,当需要识别目标或实时跟踪目标时,此类解决方案通常需要人工干预以最佳方式配置设备(例如,选择最佳相机,设置其焦点等)。为了解决这一问题,在本文中,我们定义了一种新的基于联邦边缘方法的询问方法。这种方法从相机硬件和与之相关的拍摄角度两个角度解决了这个问题。根据所提出的方法,有可能理解识别目标并可能在特定区域跟踪目标的最佳相机是什么。在城市交通管理的背景下定义了一个案例研究。
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Federated Edge for Tracking Mobile Targets on Video Surveillance Streams in Smart Cities
Nowadays, video surveillance is a very common practice in Smart Cities. There are public and private video surveillance systems, and very often different systems or single devices frame the same area. However, when a target needs to be identified or needs to be tracked in real-time, such solutions typically require human intervention to configure the devices in the best possible way (e.g., choosing the optimal cameras, setting up their focus, and so on). To address such a problem, in this paper, we define a new interrogation method based on a Federated Edge approach. This approach addresses the problem from the point of view of both camera hardware and shooting angle associated with it. According to the presented approach, it is possible to understand which the best camera to identify a target and possibly tracking it in a specific area is. A case study is defined in the context of urban mobility management.
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