SDSep 10, 2015

Estimation of the Direct-Path Relative Transfer Function for Supervised Sound-Source Localization

arXiv:1509.03205v360 citations
Originality Incremental advance
AI Analysis

This addresses sound-source localization for applications like hearing aids or robotics, but it is incremental as it builds on existing DP-RTF concepts with specific algorithmic improvements.

The paper tackles binaural localization of a single speech source in noisy and reverberant environments by estimating the direct-path relative transfer function (DP-RTF) from microphone signals, and experiments show it outperforms state-of-the-art methods under most acoustic conditions.

This paper addresses the problem of binaural localization of a single speech source in noisy and reverberant environments. For a given binaural microphone setup, the binaural response corresponding to the direct-path propagation of a single source is a function of the source direction. In practice, this response is contaminated by noise and reverberations. The direct-path relative transfer function (DP-RTF) is defined as the ratio between the direct-path acoustic transfer function of the two channels. We propose a method to estimate the DP-RTF from the noisy and reverberant microphone signals in the short-time Fourier transform domain. First, the convolutive transfer function approximation is adopted to accurately represent the impulse response of the sensors in the STFT domain. Second, the DP-RTF is estimated by using the auto- and cross-power spectral densities at each frequency and over multiple frames. In the presence of stationary noise, an inter-frame spectral subtraction algorithm is proposed, which enables to achieve the estimation of noise-free auto- and cross-power spectral densities. Finally, the estimated DP-RTFs are concatenated across frequencies and used as a feature vector for the localization of speech source. Experiments with both simulated and real data show that the proposed localization method performs well, even under severe adverse acoustic conditions, and outperforms state-of-the-art localization methods under most of the acoustic conditions.

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