Title :
An experimental comparison of source separation and beamforming techniques for microphone array signal enhancement
Author :
Thiemann, Joachim ; Vincent, Emmanuel
Author_Institution :
Carl-von-Ossietzky Univ. Oldenburg, Oldenburg, Germany
Abstract :
We consider the problem of separating one or more speech signals from a noisy background. Although blind source separation (BSS) and beamforming techniques have both been exploited in this context, the former have typically been applied to small microphone arrays and the latter to larger arrays. In this paper, we provide an experimental comparison of some established beamforming and post-filtering techniques on the one hand and modern BSS techniques involving advanced spectral models on the other hand. We analyze the results as a function of the number of microphones, the number of speakers and the input Signal-to-Noise Ratio (iSNR) w.r.t. multichannel real-world environmental noise recordings. The results of the comparison show that, provided that a suitable post-filter or spectral model is chosen, beamforming performs similar to BSS on average in the single-speaker case while in the two-speaker case BSS exceeds beamformer performance. Crucially, this claim holds independently of the number of microphones.
Keywords :
array signal processing; blind source separation; microphone arrays; speech enhancement; BSS; beamforming techniques; blind source separation; iSNR; input signal-to-noise ratio; microphone array signal enhancement; multichannel real-world environmental noise recordings; post-filtering techniques; single-speaker case; spectral model; speech signals; two-speaker case; Array signal processing; Arrays; Microphones; Noise; Source separation; Speech; FASST; MVDR; Source separation; beamforming; evaluation; post-filtering;
Conference_Titel :
Machine Learning for Signal Processing (MLSP), 2013 IEEE International Workshop on
Conference_Location :
Southampton
DOI :
10.1109/MLSP.2013.6661961