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Robust Expectation-Maximization Algorithm for Multiple Wide-band Acoustic Source Localization in the Presence of Non-Uniform Noise Variances

机译:在存在非均匀噪声差异中的多个宽带声学源定位的强大期望 - 最大化算法

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Wideband source localization using acoustic sensor networks has been drawing a lot of research interest recently. The maximum-likelihood is the predominant objective which leads to a variety of source localization approaches. In this paper, we would like to combat the source localization problem based on the realistic assumption where the sources are corrupted by the noises with non-uniform spatial variances. We study the respective limitations of two popular source localization methods for solving this problem, namely the SC-ML and AC-ML algorithms and design a new expectation maximization (EM) algorithm. Through Monte Carlo simulations, we demonstrate that our proposed EM algorithm outperforms the SC-ML and AC-ML methods in terms of the localization accuracy.
机译:使用声学传感器网络的宽带源定位最近已经借鉴了很多研究兴趣。最大可能性是主要目标,导致各种源定位方法。在本文中,我们想根据具有非均匀空间差异的噪声损坏的源损坏的现实假设来打击源本地化问题。我们研究了解决这个问题的两个流行源定位方法的各自限制,即SC-ML和AC-ML算法和设计新的期望最大化(EM)算法。通过蒙特卡罗模拟,我们证明我们所提出的EM算法在本地化精度方面优于SC-ML和AC-ML方法。

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