Scalable source localization with multichannel α-stable distributions

Mathieu Fontaine, C. Vanwynsberghe, A. Liutkus, R. Badeau
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引用次数: 4

Abstract

In this paper, we focus on the problem of sound source localization and we propose a technique that exploits the known and arbitrary geometry of the microphone array. While most probabilistic techniques presented in the past rely on Gaussian models, we go further in this direction and detail a method for source localization that is based on the recently proposed α-stable harmonizable processes. They include Cauchy and Gaussian as special cases and their remarkable feature is to allow a simple modeling of impulsive and real world sounds with few parameters. The approach we present builds on the classical convolutive mixing model and has the particularities of requiring going through the data only once, to also work in the underdetermined case of more sources than microphones and to allow massively parallelizable implementations operating in the time-frequency domain. We show that the method yields interesting performance for acoustic imaging in realistic simulations.
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多通道α-稳定分布的可扩展源定位
在本文中,我们关注声源定位问题,并提出了一种利用麦克风阵列的已知和任意几何形状的技术。虽然过去提出的大多数概率技术都依赖于高斯模型,但我们在这个方向上走得更远,并详细介绍了一种基于最近提出的α-稳定协调过程的源定位方法。它们包括柯西和高斯作为特殊情况,它们的显著特点是允许用很少的参数对脉冲和真实世界的声音进行简单的建模。我们提出的方法建立在经典的卷积混合模型的基础上,并且具有只需要遍历一次数据的特殊性,也可以在比麦克风更多的源的不确定情况下工作,并且允许在时频域中大规模并行化实现。结果表明,该方法对声成像具有很好的效果。
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