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Cooperative sensor localisation in distributed fusion networks by exploiting non-cooperative targets

机译:通过利用非合作目标在分布式融合网络中进行合作传感器定位

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We consider geographically dispersed and networked sensors collecting measurements from multiple targets in a surveillance region. Each sensor node filters the set of cluttered, noisy target measurements it collects in a sensor centric coordinate system and with imperfect detection rates. The filtered multi-target information is, then, communicated to the nearest neighbours. We are interested in network self-localisation in scenarios in which the network is restricted to use only the multi-target information shared. We propose an online distributed sensor localisation scheme based on a pairwise Markov Random Field model of the problem. We first introduce parameter likelihoods for pairs of sensors-equivalently, edge potentials- which can be computed using only the incoming multi-target information and local measurements. Then, we use belief propagation with the associated posterior model which is Markov with respect to the underlying communication topology. We demonstrate the efficacy of our algorithm for cooperative sensor localisation through an example with complex measurement models.
机译:我们考虑在地理位置分散且网络化的传感器收集来自监视区域中多个目标的测量值。每个传感器节点都会过滤在传感器中心坐标系中收集的,杂乱且嘈杂的目标测量值,并且检测率不完善。然后,将过滤后的多目标信息传送到最近的邻居。在网络被限制为仅使用共享的多目标信息的情况下,我们对网络自我定位感兴趣。我们提出了一个基于成对问题的马尔可夫随机场模型的在线分布式传感器定位方案。我们首先介绍了成对传感器的参数似然性(等效于边缘电势),可以仅使用传入的多目标信息和局部测量值来计算。然后,我们将信念传播与相关的后验模型(即相对于底层通信拓扑结构的马尔可夫模型)一起使用。我们通过一个具有复杂测量模型的示例演示了用于协同传感器定位的算法的有效性。

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