Binaural features of interaural level difference and interaural phase difference have proved to be very effective in training deep neural networks (DNNs), to generate timefrequency masks for target speech extraction in speech-speech mixtures. However, effectiveness of binaural features is reduced in more common speech-noise scenarios, since the noise may over-shadow the speech in adverse conditions. In addition, the reverberation also decreases the sparsity of binaural features and therefore adds difficulties to the separation task. To address the above limitations, we highlight the spectral difference between speech and noise spectra and incorporate the log-power spectra features to extend the DNN input. Tested on two different reverberant...
In the past years, the usage of neural networks in speech processing has increased significantly. Th...
Abstract A reverberation-time-aware deep-neural-network (DNN)-based multi-channel speech dereverbera...
Majority of speech processing algorithms operate only with the spectral magnitude, leaving spectral ...
Given binaural features as input, such as interaural level difference and interaural phase differenc...
Speech source separation aims to estimate one or more individual sources from mixtures of multiple s...
In this paper, we compare different deep neural networks (DNN) in extracting speech signals from com...
In this paper, we propose an iterative deep neural network (DNN)-based binaural source separation sc...
Abstract Neutral network (NN) and clustering are the two commonly used methods for speech separatio...
A method based on Deep Neural Networks (DNNs) and time-frequency masking has been recently developed...
Deep neural networks (DNNs) have been used for dereverberation and separation in the monaural source...
Computational speech segregation attempts to automatically separate speech from noise. This is chall...
This paper investigates deep neural networks (DNN) based on nonlinear feature mapping and statistica...
Most of the binaural source separation algorithms only consider the dissimilarities between the reco...
In many applications, speech recognition must operate in conditions where there are some distances b...
Human auditory system uses masking as one of the primary mechanisms for robust perception of speech ...
In the past years, the usage of neural networks in speech processing has increased significantly. Th...
Abstract A reverberation-time-aware deep-neural-network (DNN)-based multi-channel speech dereverbera...
Majority of speech processing algorithms operate only with the spectral magnitude, leaving spectral ...
Given binaural features as input, such as interaural level difference and interaural phase differenc...
Speech source separation aims to estimate one or more individual sources from mixtures of multiple s...
In this paper, we compare different deep neural networks (DNN) in extracting speech signals from com...
In this paper, we propose an iterative deep neural network (DNN)-based binaural source separation sc...
Abstract Neutral network (NN) and clustering are the two commonly used methods for speech separatio...
A method based on Deep Neural Networks (DNNs) and time-frequency masking has been recently developed...
Deep neural networks (DNNs) have been used for dereverberation and separation in the monaural source...
Computational speech segregation attempts to automatically separate speech from noise. This is chall...
This paper investigates deep neural networks (DNN) based on nonlinear feature mapping and statistica...
Most of the binaural source separation algorithms only consider the dissimilarities between the reco...
In many applications, speech recognition must operate in conditions where there are some distances b...
Human auditory system uses masking as one of the primary mechanisms for robust perception of speech ...
In the past years, the usage of neural networks in speech processing has increased significantly. Th...
Abstract A reverberation-time-aware deep-neural-network (DNN)-based multi-channel speech dereverbera...
Majority of speech processing algorithms operate only with the spectral magnitude, leaving spectral ...