首页> 外文期刊>Sensors Journal, IEEE >Robust Expectation-Maximization Algorithm for Multiple Wideband Acoustic Source Localization in the Presence of Nonuniform Noise Variances
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Robust Expectation-Maximization Algorithm for Multiple Wideband Acoustic Source Localization in the Presence of Nonuniform Noise Variances

机译:存在非均匀噪声方差的多宽带声源定位的鲁棒期望最大化算法

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摘要

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. However, the robust and efficient optimization algorithms are still being pursuit by researchers since different aspects about the effectiveness of such algorithms have to be addressed on different circumstances. In this paper, we would like to combat the source localization based on the realistic assumption where the sources are corrupted by the noises with nonuniform variances. We focus on the two popular source localization methods for solving this problem, namely the SC-ML (stepwise-concentrated maximum-likelihood) and AC-ML (approximately-concentrated maximum likelihood) algorithms. We explore the respective limitations of these two methods and design a new expectation maximization (EM) algorithm. Furthermore, we provide the Cramer-Rao lower bound (CRLB) for all these three methods. 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, and the root-mean-square (RMS) error of our EM algorithm is closer to the derived CRLB than both SC-ML and AC-ML methods.
机译:最近,使用声传感器网络进行宽带源定位吸引了许多研究兴趣。最大似然是导致各种源定位方法的主要目标。然而,由于必须在不同情况下解决关于这种算法的有效性的不同方面,因此研究人员仍在寻求鲁棒且高效的优化算法。在本文中,我们希望基于现实假设来打击源定位,在实际假设中,源会因具有不均匀方差的噪声而损坏。我们专注于解决此问题的两种流行的源定位方法,即SC-ML(逐步集中的最大似然度)算法和AC-ML(近似集中的最大似然度)算法。我们探索这两种方法各自的局限性,并设计一种新的期望最大化(EM)算法。此外,我们为所有这三种方法提供了Cramer-Rao下界(CRLB)。通过蒙特卡洛仿真,我们证明了我们提出的EM算法在定位精度方面优于SC-ML和AC-ML方法,并且我们的EM算法的均方根(RMS)误差更接近于导出的CRLB比SC-ML和AC-ML方法都高。

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