DocumentCode
1721886
Title
Adaptive Beamforming with a Maximum Negentropy Criterion
Author
Kumatani, Kenichi ; McDonough, John ; Klakow, Dietrich ; Garner, Philip N. ; Li, Weijfeng
Author_Institution
IDIAP Res. Inst., Lausanne
fYear
2008
Firstpage
180
Lastpage
183
Abstract
In this paper, we address an adaptive beamforming application in realistic acoustic conditions. After the position of a speaker is estimated by a speaker tracking system, we construct a subband-domain beamformer in generalized sidelobe canceller (GSC) configuration. In contrast to conventional practice, we then optimize the active weight vectors of the GSC so as to obtain an output signal with maximum negentropy (MN). This implies the beamformer output should be as non-Gaussian as possible. For calculating negentropy, we consider the Gamma and the generalized Gaussian (GG) pdfs. After MN beamforming, Zelinski post-filtering is performed to further enhance the speech by removing residual noise. Our beamforming algorithm can suppress noise and reverberation without the signal cancellation problems encountered in the conventional adaptive beamforming algorithms. We demonstrate the effectiveness of our proposed technique through a series of far-field automatic speech recognition experiments on the Multi-Channel Wall Street Journal Audio Visual Corpus (MC-WSJ-AV). On the MC-WSJ-AV evaluation data, the delay-and-sum beamformer with post-filtering achieved a word error rate (WER) of 16.5%. MN beamforming with the Gamma pdf achieved a 15.8% WER, which was further reduced to 13.2% with the GG pdf, whereas the simple delay-and-sum beamformer provided a WER of 17.8%.
Keywords
Gaussian processes; acoustic signal processing; array signal processing; filtering theory; probability; speaker recognition; Zelinski post-filtering; active weight vector; adaptive beamforming application; far-field automatic speech recognition; generalized Gaussian probability density function; generalized sidelobe canceller configuration; maximum negentropy criterion; multichannel wall street journal audio visual corpus; realistic acoustic condition; speaker position estimation; speaker tracking system; subband-domain beamformer; Acoustic noise; Array signal processing; Automatic speech recognition; Gaussian noise; Loudspeakers; Microphones; Noise cancellation; Reverberation; Speech enhancement; Speech recognition; microphone arrays; speech recognition;
fLanguage
English
Publisher
ieee
Conference_Titel
Hands-Free Speech Communication and Microphone Arrays, 2008. HSCMA 2008
Conference_Location
Trento
Print_ISBN
978-1-4244-2337-8
Electronic_ISBN
978-1-4244-2338-5
Type
conf
DOI
10.1109/HSCMA.2008.4538716
Filename
4538716
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