International audienceRobustness to reverberation is a key concern for distant-microphone ASR. Various approaches have been proposed, including single-channel or multichannel dereverberation, robust feature extraction, alternative acoustic models, and acoustic model adaptation. However, to the best of our knowledge, a detailed study of these techniques in varied reverberation conditions is still missing in the literature. In this paper, we conduct a series of experiments to assess the impact of various dereverberation and acoustic model adaptation approaches on the ASR performance in the range of reverberation conditions found in real domestic environments. We consider both established approaches such as WPE and newer approaches such as lea...
Automatic speech recognition in everyday environments must be robust to significant levels of reverb...
This work presents an analysis of distant-talking speech recognition in a variety of reverberant con...
A multi-stream framework with deep neural network (DNN) classifiers is applied to improve automatic ...
International audienceRobustness to reverberation is a key concern for distant-microphone ASR. Vario...
Reverberation is a natural phenomenon observed in enclosed environments. It occurs due to the reflec...
In this paper, a novel approach for the task of speech reverberation suppression in non-stationary (...
This paper presents extended techniques aiming at the improvement of automatic speech recognition (A...
Reverberation in speech degrades the performance of speech recognition systems, leading to higher wo...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
In this article the authors continue previous studies regarding the investigation of methods that ai...
Acoustic modeling based on deep architectures has recently gained remarkable success, with substanti...
The parametric Bayesian Feature Enhancement (BFE) and a data-driven Denoising Autoencoder (DA) both ...
This work analyzes the influence of reverberation on automatic speech recognition (ASR) systems and ...
International audienceMulti-microphone signal processing techniques have the potential to greatly im...
Over the past few decades, a range of front-end techniques have been proposed to improve the robustn...
Automatic speech recognition in everyday environments must be robust to significant levels of reverb...
This work presents an analysis of distant-talking speech recognition in a variety of reverberant con...
A multi-stream framework with deep neural network (DNN) classifiers is applied to improve automatic ...
International audienceRobustness to reverberation is a key concern for distant-microphone ASR. Vario...
Reverberation is a natural phenomenon observed in enclosed environments. It occurs due to the reflec...
In this paper, a novel approach for the task of speech reverberation suppression in non-stationary (...
This paper presents extended techniques aiming at the improvement of automatic speech recognition (A...
Reverberation in speech degrades the performance of speech recognition systems, leading to higher wo...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
In this article the authors continue previous studies regarding the investigation of methods that ai...
Acoustic modeling based on deep architectures has recently gained remarkable success, with substanti...
The parametric Bayesian Feature Enhancement (BFE) and a data-driven Denoising Autoencoder (DA) both ...
This work analyzes the influence of reverberation on automatic speech recognition (ASR) systems and ...
International audienceMulti-microphone signal processing techniques have the potential to greatly im...
Over the past few decades, a range of front-end techniques have been proposed to improve the robustn...
Automatic speech recognition in everyday environments must be robust to significant levels of reverb...
This work presents an analysis of distant-talking speech recognition in a variety of reverberant con...
A multi-stream framework with deep neural network (DNN) classifiers is applied to improve automatic ...