Deep neural network (DNN) based speech enhancement models have attracted extensive attention due to their promising performance. However, it is difficult to deploy a powerful DNN in real-time applications because of its high computational cost. Typical compression methods such as pruning and quantization do not make good use of the data characteristics. In this paper, we introduce the Skip-RNN strategy into speech enhancement models with parallel RNNs. The states of the RNNs update intermittently without interrupting the update of the output mask, which leads to significant reduction of computational load without evident audio artifacts. To better leverage the difference between the voice and the noise, we further regularize the skipping st...
This paper proposes weight regularization for a faster neural vocoder. Pruning time-consuming DNN mo...
Many studies on deep learning-based speech enhancement (SE) utilizing the computational auditory sce...
Abstract—Recently, deep neural network (DNN) based a-coustic modeling has been successfully applied ...
3D speech enhancement can effectively improve the auditory experience and plays a crucial role in au...
Deep learning algorithm are increasingly used for speech enhancement (SE). In supervised methods, gl...
Speaker-independent speech separation has achieved remarkable performance in recent years with the d...
Advancements in machine learning techniques have promoted the use of deep neural networks (DNNs) for...
The combination of a deep neural network (DNN) -based speech enhancement (SE) front-end and an autom...
We propose a bidirectional truncated recurrent neural network architecture for speech denoising. Rec...
While the performance of offline neural speech separation systems has been greatly advanced by the r...
Recurrent Neural Networks (RNNs) continue to show outstanding performance in sequence modeling tasks...
Deep Neural Networks (DNN) are nothing but neural networks with many hidden layers. DNNs are becomin...
International audienceMost of recent advances in speech enhancement (SE) have been enabled by the us...
Convolutional neural networks (CNN) and Transformer have wildly succeeded in multimedia applications...
With the advancements in deep learning approaches, the performance of speech enhancing systems in th...
This paper proposes weight regularization for a faster neural vocoder. Pruning time-consuming DNN mo...
Many studies on deep learning-based speech enhancement (SE) utilizing the computational auditory sce...
Abstract—Recently, deep neural network (DNN) based a-coustic modeling has been successfully applied ...
3D speech enhancement can effectively improve the auditory experience and plays a crucial role in au...
Deep learning algorithm are increasingly used for speech enhancement (SE). In supervised methods, gl...
Speaker-independent speech separation has achieved remarkable performance in recent years with the d...
Advancements in machine learning techniques have promoted the use of deep neural networks (DNNs) for...
The combination of a deep neural network (DNN) -based speech enhancement (SE) front-end and an autom...
We propose a bidirectional truncated recurrent neural network architecture for speech denoising. Rec...
While the performance of offline neural speech separation systems has been greatly advanced by the r...
Recurrent Neural Networks (RNNs) continue to show outstanding performance in sequence modeling tasks...
Deep Neural Networks (DNN) are nothing but neural networks with many hidden layers. DNNs are becomin...
International audienceMost of recent advances in speech enhancement (SE) have been enabled by the us...
Convolutional neural networks (CNN) and Transformer have wildly succeeded in multimedia applications...
With the advancements in deep learning approaches, the performance of speech enhancing systems in th...
This paper proposes weight regularization for a faster neural vocoder. Pruning time-consuming DNN mo...
Many studies on deep learning-based speech enhancement (SE) utilizing the computational auditory sce...
Abstract—Recently, deep neural network (DNN) based a-coustic modeling has been successfully applied ...