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A cooperative approach to sensor localisation in distributed fusion networks

机译:分布式融合网络中传感器定位的合作方法

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摘要

We consider self-localisation of networked sensor platforms which are located disparately and collect cluttered and noisy measurements from an unknown number of objects (or, targets). These nodes perform local filteringof their measurements and exchange posterior densities of object states over the network to improve upon their myopic performance. Sensor locations need to be known, however, in order to register the incoming information ina common coordinate frame for fusion. In this work, we are interested in scenarios in which these locations need to be estimated solely based on the multi-object scene. We propose a cooperative scheme which features nodes using only the information they already receive for distributed fusion: we first introduce node-wise separable parameter likelihoods for sensor pairs, which are recursively updated using the incoming multi-object information and the local measurements. Second, we establish a network coordinate system through a pairwise Markov random field model which has the introduced likelihoods as its edge potentials. The resulting algorithm consists of consecutive edge potential updates and Belief Propagation message passing operations. These potentials are capable of incorporating multi-object information without the need to find explicit object-measurement associations and updated in linear complexity with the number of measurements. We demonstrate the efficacy of our algorithm through simulations with multiple objects and complex measurement models.
机译:我们考虑了位于不同位置的网络传感器平台的自定位,并从未知数量的对象(或目标)中收集了混乱且嘈杂的测量结果。这些节点执行其测量值的局部过滤,并通过网络交换对象状态的后验密度,以改善其近视性能。但是,需要知道传感器的位置,以便将输入的信息注册在一个用于融合的公共坐标系中。在这项工作中,我们对只需要基于多对象场景估计这些位置的场景感兴趣。我们提出了一种协作方案,该方案的特征在于节点仅使用它们已经接收到的信息进行分布式融合:我们首先为传感器对引入节点级可分离的参数似然性,使用输入的多对象信息和局部测量值来递归更新这些似然性。其次,我们通过成对的马尔可夫随机场模型建立网络坐标系,该模型具有引入的似然性作为其边缘势。生成的算法包括连续的边电位更新和置信度消息传递操作。这些潜力能够合并多对象信息,而无需找到明确的对象与测量的关联,并且随着测量次数的线性复杂性而更新。我们通过对多个对象和复杂的测量模型进行仿真来证明我们算法的有效性。

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