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Self-organized and scalable camera networks for systematic human tracking across nonoverlapping cameras

机译:自组织和可扩展的摄像机网络,可跨不重叠的摄像机进行系统的人工跟踪

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We present a self-organized and scalable multiple-camera tracking system that tracks human across the cameras with nonoverlapping views. Given the GPS locations of uncalibrated cameras, the system automatically detects the existence of camera link within the camera network based on the routing information provided by Google Maps. The connected zones in any pair of directly-connected cameras are identified based on the feature matching between the camera's view and Google Street View. The camera link model is further estimated by an unsupervised learning scheme. Finally, multiple-camera tracking is performed. Thanks to the unsupervised pairwise learning and tracking in our system, the camera network is self-organized, and our proposed system is able to be scaled up efficiently when more cameras are added into the network.
机译:我们提出了一种自组织且可扩展的多摄像机跟踪系统,该系统可在不重叠视图的情况下跨摄像机跟踪人员。给定未校准相机的GPS位置,系统会根据Google Maps提供的路由信息​​自动检测相机网络内相机链接的存在。根据相机视图和Google街景视图之间的功能匹配来识别任意一对直接连接的相机中的连接区域。相机链接模型是通过无监督学习方案进一步估计的。最后,执行多摄像机跟踪。得益于我们系统中无监督的成对学习和跟踪功能,摄像机网络是自组织的,并且当向网络中添加更多摄像机时,我们提出的系统能够有效地进行扩展。

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