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基于点声源的声源盲提取和定位。

Blind extraction and localization of sound sources using point sources based approaches.

机构信息

Department of Mechanical Engineering, Wayne State University, Detroit, Michigan 48202, USA.

出版信息

J Acoust Soc Am. 2012 Aug;132(2):904-17. doi: 10.1121/1.4726072.

Abstract

This paper presents theoretical models for blind sound source localization and separation of the signals emitted by arbitrary point sources in free space. Source localizations are achieved by a model based approach that accounts for the spherical spreading of an acoustic wave and utilizes an iterative triangulation, based on the signals measured by a three-dimensional microphone array. Once source locations are determined, the source signals are separated by using the point source separation (PSS) method, which is valid for all types of signals, including harmonic, continuous, transient, random, narrowband and broadband. General solutions for signals separation are presented. Theoretically, PSS can reconstruct the individual source signals exactly. This is because it employs the free-space Green's function, which defines the exact correlation among individual sources and measurement microphones. To validate PSS, numerical simulations are carried out and results are compared with those obtained by FastICA (Independent Component Analysis) code. The impacts of various parameters such as the microphone configuration, type of source signals, signal to noise ratio, number of microphones and source localization errors on the quality of signals separation by using PSS and FastICA are examined. The advantages and disadvantages of PSS and FastICA are compared and discussed.

摘要

本文提出了用于自由空间中任意点声源信号的盲声源定位和分离的理论模型。声源定位是通过基于模型的方法实现的,该方法考虑了声波的球面扩展,并利用基于三维麦克风阵列测量的信号进行迭代三角测量。一旦确定了声源位置,就可以使用点源分离(PSS)方法来分离声源信号,该方法适用于包括谐波、连续、瞬态、随机、窄带和宽带在内的所有类型的信号。本文还提出了信号分离的一般解决方案。从理论上讲,PSS 可以精确地重建各个源信号。这是因为它采用了自由空间格林函数,该函数定义了各个源与测量麦克风之间的精确相关性。为了验证 PSS,进行了数值模拟,并将结果与 FastICA(独立分量分析)代码获得的结果进行了比较。研究了麦克风配置、源信号类型、信噪比、麦克风数量和声源定位误差等各种参数对 PSS 和 FastICA 信号分离质量的影响。比较和讨论了 PSS 和 FastICA 的优缺点。

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