Publication | Closed Access
Unsupervised spectral subtraction for noise-robust ASR
33
Citations
18
References
2005
Year
Unknown Venue
Aurora 2EngineeringSpectrum EstimationSpeech Enhancement2-Mixture ModelAcoustic ModelingNoise ReductionSpeech RecognitionImage AnalysisData SciencePattern RecognitionNoiseRobust Speech RecognitionHealth SciencesEm AlgorithmSpectral SubtractionInverse ProblemsComputer ScienceDistant Speech RecognitionSignal ProcessingSpeech AcousticsSpeech ProcessingSpeech Separation
This paper proposes a simple, computationally efficient 2-mixture model approach to discriminate between speech and background noise at the magnitude spectrogram level. It is directly derived from observations on real data, and can be used in a fully unsupervised manner, with the EM algorithm. In this paper, the 2-mixture model is used in an "unsupervised spectral subtraction" scheme that can be applied as a pre-processing step for any acoustic feature extraction scheme, such as MFCCs or PLP. The goal is to improve noise-robustness of the acoustic features. Experimental results on both OGI Numbers 95 and Aurora 2 tasks yielded a major improvement on all noise conditions, while retaining a similar performance on clean conditions.
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