In recent decades, researchers have been focused on developing noise-robust methods in order to compensate for noise effects in automatic speech recognition (ASR) systems and enhance their performance. In this paper, we propose a feature-based noise-robust method that employs a novel data analysis technique—robust principal component analysis (RPCA). In the proposed scenario, RPCA is employed to process a noise-corrupted speech feature matrix, and the obtained sparse partition is shown to reveal speech-dominant characteristics. One apparent advantage of using RPCA for enhancing noise robustness is that no prior knowledge about the noise is required. The proposed RPCA-based method is evaluated with the Aurora-4 database and a task using a st...
The problem of speaker and channel adaptation in deep neural network (DNN) based automatic speech re...
This paper explores the extraction of speech fea-tures aiming noise robustness for speech recognitio...
This paper presents a new front-end for robust speech recognition. This new front-end scenario focus...
[[abstract]]在本論文中,我們提出一種新的語音特徵強化技術、用以雜訊環境之下的自動語音辨識。在此新技術中,我們利用了著名的強健主軸分析法(robust principal component...
[[abstract]]The performance of current automatic speech recognition (ASR) systems often deteriorates...
AbstractA long-term goal of machine learning is providing techniques to overcome the unwanted variat...
The acoustic environment in which speech is recorded has a strong influence on the statistical distr...
Abstract—A blind approach for estimating the signal to noise ratio (SNR) of a speech signal corrupte...
This paper presents a method for extraction of speech robust features when the external noise is add...
We present in this paper a signal subspace-based approach for enhancing a noisy signal. This algorit...
Recent progress in deep learning has revolutionized speech recognition research, with Deep Neural Ne...
AbstractRobust principal component analysis (RPCA) is a powerful procedure which decomposes a matrix...
This thesis presents a study of alternative speech feature extraction methods aimed at increasing ro...
Analytic phase of the speech signal plays an important role in human speech perception, specially in...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
The problem of speaker and channel adaptation in deep neural network (DNN) based automatic speech re...
This paper explores the extraction of speech fea-tures aiming noise robustness for speech recognitio...
This paper presents a new front-end for robust speech recognition. This new front-end scenario focus...
[[abstract]]在本論文中,我們提出一種新的語音特徵強化技術、用以雜訊環境之下的自動語音辨識。在此新技術中,我們利用了著名的強健主軸分析法(robust principal component...
[[abstract]]The performance of current automatic speech recognition (ASR) systems often deteriorates...
AbstractA long-term goal of machine learning is providing techniques to overcome the unwanted variat...
The acoustic environment in which speech is recorded has a strong influence on the statistical distr...
Abstract—A blind approach for estimating the signal to noise ratio (SNR) of a speech signal corrupte...
This paper presents a method for extraction of speech robust features when the external noise is add...
We present in this paper a signal subspace-based approach for enhancing a noisy signal. This algorit...
Recent progress in deep learning has revolutionized speech recognition research, with Deep Neural Ne...
AbstractRobust principal component analysis (RPCA) is a powerful procedure which decomposes a matrix...
This thesis presents a study of alternative speech feature extraction methods aimed at increasing ro...
Analytic phase of the speech signal plays an important role in human speech perception, specially in...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
The problem of speaker and channel adaptation in deep neural network (DNN) based automatic speech re...
This paper explores the extraction of speech fea-tures aiming noise robustness for speech recognitio...
This paper presents a new front-end for robust speech recognition. This new front-end scenario focus...