Abstract:
Speech applications in far-field real world settings often deal with signals that are corrupted by reverberation. The task of dereverberation constitutes an important ste...Show MoreMetadata
Abstract:
Speech applications in far-field real world settings often deal with signals that are corrupted by reverberation. The task of dereverberation constitutes an important step to improve the audible quality and to reduce the error rates in applications like automatic speech recognition (ASR). We propose a unified framework of speech dereverberation for improving the speech quality and the ASR performance using the approach of envelope-carrier decomposition provided by an autoregressive (AR) model. The AR model is applied in the frequency domain of the sub-band speech signals to separate the envelope and carrier parts. A novel neural architecture based on dual path long short term memory (DPLSTM) model is proposed, which jointly enhances the sub-band envelope and carrier components. The dereverberated envelope-carrier signals are modulated and the sub-band signals are synthesized to reconstruct the audio signal back. The DPLSTM model for dereverberation of envelope and carrier components also allows the joint learning of the network weights for the down stream ASR task. In the ASR tasks on the REVERB challenge dataset as well as on the VOiCES dataset, we illustrate that the joint learning of speech dereverberation network and the E2E ASR model yields significant performance improvements over the baseline ASR system trained on log-mel spectrogram as well as other benchmarks for dereverberation (average relative improvements of 10-24% over the baseline system). The speech quality improvements, evaluated using subjective listening tests, further highlight the improved quality of the reconstructed audio.
Published in: IEEE/ACM Transactions on Audio, Speech, and Language Processing ( Volume: 32)
Funding Agency:
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Frequency Domain ,
- Autoregressive Model ,
- Short-term Memory ,
- Learning Network ,
- Speech Recognition ,
- Neural Architecture ,
- Speech Signal ,
- Speech Quality ,
- Baseline System ,
- Envelope Components ,
- Dual Path ,
- Automatic Speech Recognition System ,
- Training Set ,
- Training Data ,
- Convolution ,
- Time Domain ,
- Utterances ,
- Neural Model ,
- Recurrent Neural Network ,
- Carrier Frequency ,
- Word Error Rate ,
- Short-time Fourier Transform ,
- Deep Neural Model ,
- Clear Speech ,
- Beamforming ,
- Discrete Cosine Transform ,
- Neural Framework ,
- Reverberation Time ,
- Transformer Decoder ,
- Wall Street Journal
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Frequency Domain ,
- Autoregressive Model ,
- Short-term Memory ,
- Learning Network ,
- Speech Recognition ,
- Neural Architecture ,
- Speech Signal ,
- Speech Quality ,
- Baseline System ,
- Envelope Components ,
- Dual Path ,
- Automatic Speech Recognition System ,
- Training Set ,
- Training Data ,
- Convolution ,
- Time Domain ,
- Utterances ,
- Neural Model ,
- Recurrent Neural Network ,
- Carrier Frequency ,
- Word Error Rate ,
- Short-time Fourier Transform ,
- Deep Neural Model ,
- Clear Speech ,
- Beamforming ,
- Discrete Cosine Transform ,
- Neural Framework ,
- Reverberation Time ,
- Transformer Decoder ,
- Wall Street Journal
- Author Keywords