Mapping and masking are two important speech enhancement methods based on deep learning that aim to recover the original clean speech from corrupted speech. In practice, too large recovery errors severely restrict the improvement in speech quality. In our preliminary experiment, we demonstrated that mapping and masking methods had different conversion mechanisms and thus assumed that their recovery errors are highly likely to be complementary. Also, the complementarity was validated accordingly. Based on the principle of error minimization, we propose the fusion between mapping and masking for speech dereverberation. Specifically, we take the weighted mean of the amplitudes recovered by the two methods as the estimated amplitude of the fusi...
With the advancements in deep learning approaches, the performance of speech enhancing systems in th...
Abstract Speech is easily interfered by external environment in reality, which results in the loss o...
Over the past few decades, a range of front-end techniques have been proposed to improve the robustn...
Recently, deep neural networks have achieved incredible success in the area of computer vision and n...
This paper investigates deep neural networks (DNN) based on nonlinear feature mapping and statistica...
Mapping and Masking targets are both widely used in recent Deep Neural Network (DNN) based supervise...
Speech enhancement, which aims to recover the clean speech of the corrupted signal, plays an importa...
In the past years, the usage of neural networks in speech processing has increased significantly. Th...
In this work, we propose a novel representationlearning technique for Deep Learning-based Speech Enh...
In real rooms, recorded speech usually contains reverberation, which degrades the quality and intell...
This paper investigates four single-channel speech dereverberation algorithms, i.e., two unsupervise...
Deep learning has recently shown promising improvement in the speech enhancement field, due to its e...
This paper describes a novel two-stage dereverberation feature enhancement method for noise-robust a...
We investigate the problem of speaker independent acoustic-to-articulatory inversion (AAI) in noisy ...
Single-channel speech enhancement in highly non-stationary noise conditions is a very challenging ta...
With the advancements in deep learning approaches, the performance of speech enhancing systems in th...
Abstract Speech is easily interfered by external environment in reality, which results in the loss o...
Over the past few decades, a range of front-end techniques have been proposed to improve the robustn...
Recently, deep neural networks have achieved incredible success in the area of computer vision and n...
This paper investigates deep neural networks (DNN) based on nonlinear feature mapping and statistica...
Mapping and Masking targets are both widely used in recent Deep Neural Network (DNN) based supervise...
Speech enhancement, which aims to recover the clean speech of the corrupted signal, plays an importa...
In the past years, the usage of neural networks in speech processing has increased significantly. Th...
In this work, we propose a novel representationlearning technique for Deep Learning-based Speech Enh...
In real rooms, recorded speech usually contains reverberation, which degrades the quality and intell...
This paper investigates four single-channel speech dereverberation algorithms, i.e., two unsupervise...
Deep learning has recently shown promising improvement in the speech enhancement field, due to its e...
This paper describes a novel two-stage dereverberation feature enhancement method for noise-robust a...
We investigate the problem of speaker independent acoustic-to-articulatory inversion (AAI) in noisy ...
Single-channel speech enhancement in highly non-stationary noise conditions is a very challenging ta...
With the advancements in deep learning approaches, the performance of speech enhancing systems in th...
Abstract Speech is easily interfered by external environment in reality, which results in the loss o...
Over the past few decades, a range of front-end techniques have been proposed to improve the robustn...