Deep learning has recently shown promising improvement in the speech enhancement field, due to its effectiveness in eliminating noise. However, a drawback of the denoising process is the introduction of speech distortion, which negatively affects speech quality and intelligibility. In this work, we propose a deep convolutional denoising autoencoder-based speech enhancement network that is designed to have an encoder deeper than the decoder, to improve performance and decrease complexity. Furthermore, we present a two-stage learning approach, in which denoising is performed in the first frequency domain stage using magnitude spectrum as a training target; while, in the second stage, further denoising and speech reconstruction are performed i...
Speech enhancement plays an important role in Automatic Speech Recognition (ASR) even though this ta...
In this paper, we considered the problem of the speech enhancement similar to the real-world environ...
Speech enhancement and source separation are related tasks that aim to extract and/or improve a sign...
Deep learning has recently shown promising improvement in the speech enhancement field, due to its e...
Speech enhancement, which aims to recover the clean speech of the corrupted signal, plays an importa...
Recent speech enhancement research has shown that deep learning techniques are very effective in rem...
Speech enhancement is the task that aims to improve the quality and the intelligibility of a speech ...
Speech enhancement is an essential preprocessing stage for automatic speech recognition in noisy con...
Acquiring speech signal in real-world environment is always accompanied by various ambient noises, w...
This master thesis describes the implementation and evaluation of a promising approach to speech enh...
Mapping and Masking targets are both widely used in recent Deep Neural Network (DNN) based supervise...
International audienceWe consider the problem of explaining the robustness of neural networks used t...
Speech enhancement (SE) is a critical aspect of various speech-processing applications. Recent resea...
Speech enhancement, aiming at improving the intelligibility and overall perceptual quality of a cont...
This paper proposes a Deep Learning (DL) based Wiener filter estimator for speech enhancement in the...
Speech enhancement plays an important role in Automatic Speech Recognition (ASR) even though this ta...
In this paper, we considered the problem of the speech enhancement similar to the real-world environ...
Speech enhancement and source separation are related tasks that aim to extract and/or improve a sign...
Deep learning has recently shown promising improvement in the speech enhancement field, due to its e...
Speech enhancement, which aims to recover the clean speech of the corrupted signal, plays an importa...
Recent speech enhancement research has shown that deep learning techniques are very effective in rem...
Speech enhancement is the task that aims to improve the quality and the intelligibility of a speech ...
Speech enhancement is an essential preprocessing stage for automatic speech recognition in noisy con...
Acquiring speech signal in real-world environment is always accompanied by various ambient noises, w...
This master thesis describes the implementation and evaluation of a promising approach to speech enh...
Mapping and Masking targets are both widely used in recent Deep Neural Network (DNN) based supervise...
International audienceWe consider the problem of explaining the robustness of neural networks used t...
Speech enhancement (SE) is a critical aspect of various speech-processing applications. Recent resea...
Speech enhancement, aiming at improving the intelligibility and overall perceptual quality of a cont...
This paper proposes a Deep Learning (DL) based Wiener filter estimator for speech enhancement in the...
Speech enhancement plays an important role in Automatic Speech Recognition (ASR) even though this ta...
In this paper, we considered the problem of the speech enhancement similar to the real-world environ...
Speech enhancement and source separation are related tasks that aim to extract and/or improve a sign...