In this paper, a neural network-augmented algorithm for noise-robust online dereverberation with a Kalman filtering variant of the weighted prediction error (WPE) method is proposed. The filter stochastic variations are predicted by a deep neural network (DNN) trained end-to-end using the filter residual error and signal characteristics. The presented framework allows for robust dereverberation on a single-channel noisy reverberant dataset similar to WHAMR!. The Kalman filtering WPE introduces distortions in the enhanced signal when predicting the filter variations from the residual error only, if the target speech power spectral density is not perfectly known and the observation is noisy. The proposed approach avoids these distortions by c...
Over the past few decades, a range of front-end techniques have been proposed to improve the robustn...
This paper proposes a neural network based system for multi-channel speech enhancement and dereverbe...
Adaptive beamforming and deconvolution techniques have shown effectiveness for reducing noise and re...
In the past years, the usage of neural networks in speech processing has increased significantly. Th...
We describe a monaural speech enhancement algorithm based on modulation-domain Kalman filtering to b...
When capturing speech signals using a distant microphone within a confined acoustic space, the recor...
This work focuses on online dereverberation for hearing devices using the weighted prediction error ...
Multichannel linear prediction-based dereverberation in the short-time Fourier transform (STFT) doma...
This thesis is about robust single-channel speech enhancement, joint noise suppression and dereverbe...
This paper investigates four single-channel speech dereverberation algorithms, i.e., two unsupervise...
This paper investigates deep neural networks (DNN) based on nonlinear feature mapping and statistica...
This report details a comparison between three speaker verification algorithms used in the presence ...
The parametric Bayesian Feature Enhancement (BFE) and a data-driven Denoising Autoencoder (DA) both ...
Abstract A reverberation-time-aware deep-neural-network (DNN)-based multi-channel speech dereverbera...
Reverberant signals can be modeled in the shorttime Fourier transform (STFT) domain using a frequenc...
Over the past few decades, a range of front-end techniques have been proposed to improve the robustn...
This paper proposes a neural network based system for multi-channel speech enhancement and dereverbe...
Adaptive beamforming and deconvolution techniques have shown effectiveness for reducing noise and re...
In the past years, the usage of neural networks in speech processing has increased significantly. Th...
We describe a monaural speech enhancement algorithm based on modulation-domain Kalman filtering to b...
When capturing speech signals using a distant microphone within a confined acoustic space, the recor...
This work focuses on online dereverberation for hearing devices using the weighted prediction error ...
Multichannel linear prediction-based dereverberation in the short-time Fourier transform (STFT) doma...
This thesis is about robust single-channel speech enhancement, joint noise suppression and dereverbe...
This paper investigates four single-channel speech dereverberation algorithms, i.e., two unsupervise...
This paper investigates deep neural networks (DNN) based on nonlinear feature mapping and statistica...
This report details a comparison between three speaker verification algorithms used in the presence ...
The parametric Bayesian Feature Enhancement (BFE) and a data-driven Denoising Autoencoder (DA) both ...
Abstract A reverberation-time-aware deep-neural-network (DNN)-based multi-channel speech dereverbera...
Reverberant signals can be modeled in the shorttime Fourier transform (STFT) domain using a frequenc...
Over the past few decades, a range of front-end techniques have been proposed to improve the robustn...
This paper proposes a neural network based system for multi-channel speech enhancement and dereverbe...
Adaptive beamforming and deconvolution techniques have shown effectiveness for reducing noise and re...