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A generalized subspace approach for enhancing speech corrupted by colored noise
371
Citations
15
References
2003
Year
Noise SubspaceEngineeringSpeech EnhancementGeneralized Subspace ApproachNoise ReductionSpeech RecognitionSpeech CodingNoiseRobust Speech RecognitionClean SpeechStatisticsHealth SciencesInverse ProblemsComputer ScienceSignal ProcessingSpeech CommunicationColored NoiseSpeech ProcessingSpeech SeparationSpeech PerceptionSignal Separation
Prior subspace methods for speech enhancement typically assume white noise, as discussed in Van Trees (1995). The paper proposes a generalized subspace.
A generalized subspace approach is proposed for enhancement of speech corrupted by colored noise. A nonunitary transform, based on the simultaneous diagonalization of the clean speech and noise covariance matrices, is used to project the noisy signal onto a signal-plus-noise subspace and a noise subspace. The clean signal is estimated by nulling the signal components in the noise subspace and retaining the components in the signal subspace. The applied transform has built-in prewhitening and can therefore be used in general for colored noise. The proposed approach is shown to be a generalization of the approach proposed by Y. Ephraim and H.L. Van Trees (see ibid., vol.3, p.251-66, 1995) for white noise. Two estimators are derived based on the nonunitary transform, one based on time-domain constraints and one based on spectral domain constraints. Objective and subjective measures demonstrate improvements over other subspace-based methods when tested with TIMIT sentences corrupted with speech-shaped noise and multi-talker babble.
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