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Distributed source number estimation for multiple target detection in sensor networks

机译:传感器网络中多目标检测的分布式源数量估计

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Multiple target detection in sensor networks is a challenging problem since the signal captured by individual sensor node is normally a linearonlinear weighted mixture of the source signals. Independent component analysis (ICA) has been widely used to solve the source estimation problem but most of the algorithms assume the number of sources is fixed and equals to the number of observations which generally is not the case in sensor networks. Even though several methods are put forward for the source number estimation, the centralized scheme hinders their application in sensor networks due to the extremely constrained resource and scalability issues. In this paper, a distributed source number estimation framework is developed, where the local estimation is generated within each cluster and a fusion algorithm is performed to combine the local results. We derive a posterior probability fusion method based on Bayes theorem and compare it with the Dempster rule of combination. Experimental results show that using the distributed framework, the confidence of source number estimation is improved over the centralized approach while at the same time, the network traffic can be significantly reduced and resources can be conserved.
机译:传感器网络中的多目标检测是一个具有挑战性的问题,因为单个传感器节点捕获的信号通常是源信号的线性/非线性加权混合。独立分量分析(ICA)已被广泛用于解决源估计问题,但是大多数算法都假定源的数量是固定的,并且等于观测值的数量,而传感器网络通常不是这种情况。尽管提出了几种方法进行信源数估计,但是由于资源和可伸缩性问题极为严格,集中式方案阻碍了它们在传感器网络中的应用。在本文中,开发了一个分布式源数目估计框架,其中在每个群集内生成局部估计,并执行融合算法以组合局部结果。我们推导出基于贝叶斯定理的后验概率融合方法,并将其与组合的Dempster规则进行比较。实验结果表明,采用分布式框架,可以比集中式方法提高信源数估计的可信度,同时可以显着减少网络流量,节省资源。

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