Title :
Single channel reverberation suppression based on sparse linear prediction
Author :
Lopez, Nancy ; Grenier, Yves ; Richard, Guilhem ; Bourmeyster, Ivan
Author_Institution :
Arkamys, Paris, France
Abstract :
Reverberation degrades speech intelligibility in telecommunications as well as it increases the word error rate in automatic speech recognition tasks. Several dereverberation methods have been proposed recently in order to counter these effects. In the single microphone case, the dereverberation problem is underdetermined and reverberation suppression approaches are preferred. In this paper we propose a novel method for single channel reverberation suppression. Late reverberation is estimated in the time-frequency domain as a sparse linear combination of previous frames. The predictors associated to the model are determined in a Lasso framework and a spectral subtraction filter is designed to produce the enhanced signal. This model does not require any additional information about the room acoustics and it is well suited for real-time applications. The method has state-of-the-art performance in terms of both reverberation suppression and spectral distortion.
Keywords :
microphones; reverberation; speech intelligibility; speech recognition; time-frequency analysis; Lasso framework; automatic speech recognition tasks; dereverberation problem; real-time applications; room acoustics; single channel reverberation suppression; single microphone; sparse linear combination; sparse linear prediction; spectral subtraction filter; speech intelligibility; telecommunications; time-frequency domain; word error rate; Estimation; Reverberation; Speech; Speech processing; Time-frequency analysis; Lasso; Late Reverberation Estimation; Single Channel Speech Enhancement; Sparse Linear Prediction;
Conference_Titel :
Acoustics, Speech and Signal Processing (ICASSP), 2014 IEEE International Conference on
Conference_Location :
Florence
DOI :
10.1109/ICASSP.2014.6854591