Litcius/Paper detail

Three-dimensional source localization using sparse Bayesian learning on a spherical microphone array

Guoli Ping, Efrén Fernández-Grande, Peter Gerstoft, Zhigang Chu

2020The Journal of the Acoustical Society of America64 citationsDOI

Abstract

The identification of acoustic sources in a three-dimensional (3D) domain based on measurements with an array of microphones is a challenging problem: it entails the estimation of the angular position of the sources (direction of arrival), distance relative to the array (range), and the quantification of the source amplitudes. A 3D source localization model using a rigid spherical microphone array with spherical wave propagation is proposed. In this study, sparse Bayesian learning is used to perform localization in 3D space and examine the use of principal component analysis to denoise the measurement data. The performance of the proposed method is examined numerically and experimentally, which is tested both in a free-field and in a reverberant environment. The numerical and experimental investigations demonstrate that the approach offers accurate localization in a 3D domain, resolving closely spaced sources and making it possible to identify sources located at different ranges.

Topics & Concepts

Microphone arrayAcousticsPosition (finance)Computer scienceMicrophoneAcoustic source localizationDomain (mathematical analysis)Principal component analysisSparse arrayAlgorithmArtificial intelligencePhysicsMathematicsAcoustic waveMathematical analysisFinanceSound pressureEconomicsSpeech and Audio ProcessingMusic and Audio ProcessingAerodynamics and Acoustics in Jet Flows