Deep learning based speech enhancement approaches like Deep Neural Networks (DNN) and Long-Short Term Memory (LSTM) have already demonstrated superior results to classical methods. However these methods do not take full advantage of temporal context information. While DNN and LSTM consider temporal context in the noisy source speech, it does not do so for the estimated clean speech. Both DNN and LSTM also have a tendency to over-smooth spectra, which causes the enhanced speech to sound muffled. This paper proposes a novel architecture to address both issues, which we term a conditional generative model (CGM). By adopting an adversarial training scheme applied to a generator of deep dilated convolutional layers, CGM is designed to model...
This master thesis describes the implementation and evaluation of a promising approach to speech enh...
Speech enhancement is the task that aims to improve the quality and the intelligibility of a speech ...
Abstract Speech is easily interfered by external environment in reality, which results in the loss o...
Score-based generative models (SGMs) have recently shown impressive results for difficult generative...
Speech enhancement, which aims to recover the clean speech of the corrupted signal, plays an importa...
Acquiring speech signal in real-world environment is always accompanied by various ambient noises, w...
Deep learning has recently shown promising improvement in the speech enhancement field, due to its e...
Speech enhancement improves recorded voice utterances to eliminate noise that might be impeding thei...
In this paper, we considered the problem of the speech enhancement similar to the real-world environ...
Long short-term memory (LSTM) has been effectively used to represent sequential data in recent years...
Statistical speech reconstruction for larynx-related dysphonia has achieved good performance using G...
International audienceWe consider the problem of explaining the robustness of neural networks used t...
Abstract—This letter presents a regression-based speech en-hancement framework using deep neural net...
Many signal processing algorithms have been proposed to improve the quality of speech recorded in th...
Single-channel speech enhancement in highly non-stationary noise conditions is a very challenging ta...
This master thesis describes the implementation and evaluation of a promising approach to speech enh...
Speech enhancement is the task that aims to improve the quality and the intelligibility of a speech ...
Abstract Speech is easily interfered by external environment in reality, which results in the loss o...
Score-based generative models (SGMs) have recently shown impressive results for difficult generative...
Speech enhancement, which aims to recover the clean speech of the corrupted signal, plays an importa...
Acquiring speech signal in real-world environment is always accompanied by various ambient noises, w...
Deep learning has recently shown promising improvement in the speech enhancement field, due to its e...
Speech enhancement improves recorded voice utterances to eliminate noise that might be impeding thei...
In this paper, we considered the problem of the speech enhancement similar to the real-world environ...
Long short-term memory (LSTM) has been effectively used to represent sequential data in recent years...
Statistical speech reconstruction for larynx-related dysphonia has achieved good performance using G...
International audienceWe consider the problem of explaining the robustness of neural networks used t...
Abstract—This letter presents a regression-based speech en-hancement framework using deep neural net...
Many signal processing algorithms have been proposed to improve the quality of speech recorded in th...
Single-channel speech enhancement in highly non-stationary noise conditions is a very challenging ta...
This master thesis describes the implementation and evaluation of a promising approach to speech enh...
Speech enhancement is the task that aims to improve the quality and the intelligibility of a speech ...
Abstract Speech is easily interfered by external environment in reality, which results in the loss o...