Speech Enhancement using Convolutional Autoencoder Network

Abstract—We present an end-to-end deep learning approach to denoising speech signals by processing the raw waveform directly. Given input audio containing speech corrupted by an additive background signal, the system aims to produce a processed signal that contains only the speech content. Recent ap...

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Vydáno v:INTERANTIONAL JOURNAL OF SCIENTIFIC RESEARCH IN ENGINEERING AND MANAGEMENT Ročník 7; číslo 12; s. 1 - 11
Hlavní autoři: Sengupta, Subhadeep, Rihal, Pranav, D’Souza, Allwin
Médium: Journal Article
Jazyk:angličtina
Vydáno: 01.12.2023
ISSN:2582-3930, 2582-3930
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Shrnutí:Abstract—We present an end-to-end deep learning approach to denoising speech signals by processing the raw waveform directly. Given input audio containing speech corrupted by an additive background signal, the system aims to produce a processed signal that contains only the speech content. Recent approaches have shown promising results using various deep network architec- tures. In this paper, we propose to train a fully-convolutional context aggregation network using a deep feature loss. That loss is based on comparing the internal feature activations in a different network, trained for acoustic environment detection and domestic audio tagging. Our approach outperforms the stateof- the-art in objective speech quality metrics and in large-scale perceptual experiments with human listeners. It also outperforms an identical network trained using traditional regression losses. The advantage of the new approach is particularly pronounced for the hardest data with the most intrusive background noise, for which denoising is most needed and most challenging. Index Terms—speech enhancement,Fully convolutional denois- ing autoencoders, single channel audio source separation, stacked convolutional autoencoders, deep convolutional neural networks, deep learning.
ISSN:2582-3930
2582-3930
DOI:10.55041/IJSREM27573