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Papers/Receptive Field Analysis of Temporal Convolutional Network...

Receptive Field Analysis of Temporal Convolutional Networks for Monaural Speech Dereverberation

William Ravenscroft, Stefan Goetze, Thomas Hain

2022-04-13Speech EnhancementSpeech Dereverberation
PaperPDFCode(official)

Abstract

Speech dereverberation is often an important requirement in robust speech processing tasks. Supervised deep learning (DL) models give state-of-the-art performance for single-channel speech dereverberation. Temporal convolutional networks (TCNs) are commonly used for sequence modelling in speech enhancement tasks. A feature of TCNs is that they have a receptive field (RF) dependent on the specific model configuration which determines the number of input frames that can be observed to produce an individual output frame. It has been shown that TCNs are capable of performing dereverberation of simulated speech data, however a thorough analysis, especially with focus on the RF is yet lacking in the literature. This paper analyses dereverberation performance depending on the model size and the RF of TCNs. Experiments using the WHAMR corpus which is extended to include room impulse responses (RIRs) with larger T60 values demonstrate that a larger RF can have significant improvement in performance when training smaller TCN models. It is also demonstrated that TCNs benefit from a wider RF when dereverberating RIRs with larger RT60 values.

Results

TaskDatasetMetricValueModel
Speech EnhancementWHAMR_extESTOI81Conv-TasNet DAE
Speech EnhancementWHAMR_extPESQ2.46Conv-TasNet DAE
Speech EnhancementWHAMR_extSI-SDR7.07Conv-TasNet DAE
Speech EnhancementWHAMR_extSI-SDRi10.81Conv-TasNet DAE
Speech EnhancementWHAMR_extSRMR9.18Conv-TasNet DAE
Speech EnhancementWHAMR!ESTOI93Conv-TasNet DAE
Speech EnhancementWHAMR!PESQ3.46Conv-TasNet DAE
Speech EnhancementWHAMR!SI-SDR12.03Conv-TasNet DAE
Speech EnhancementWHAMR!SI-SDRi7.63Conv-TasNet DAE
Speech EnhancementWHAMR!SRMR8.7Conv-TasNet DAE

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