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A probabilistic framework for tracking in wide-area environments

机译:用于在广域环境中进行跟踪的概率框架

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Surveillance in wide-area spatial environments is characterised by complex spatial layouts, large state space, and the use of multiple cameras/sensors. To solve this problem, there is a need for representing the dynamic and noisy data in the tracking tasks, and dealing with them at different levels of detail. This requirement is particularly suited to the layered dynamic probabilistic network (LDPN), a special type of dynamic probabilistic network. In this paper, we propose the use of LDPN as the integrated framework for tracking in wide-area environments. We illustrate, with the help of a synthetic tracking scenario, how the parameters of the LDPN can be estimated from training data, and then used to draw predictions and answer queries about unseen tracks at various levels of detail.
机译:广域空间环境中的监视具有以下特点:复杂的空间布局,较大的状态空间以及使用多个摄像头/传感器。为了解决这个问题,需要在跟踪任务中表示动态和嘈杂的数据,并以不同的细节级别处理它们。此要求特别适用于分层动态概率网络(LDPN),这是一种特殊类型的动态概率网络。在本文中,我们建议使用LDPN作为在广域环境中进行跟踪的集成框架。我们将在综合跟踪方案的帮助下说明如何从训练数据中估算LDPN的参数,然后将其用于绘制预测并回答有关各个细节级别上看不见的轨道的查询。

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