Additive noise generates important losses in automatic speech recognition systems. In this paper, we show that one of the causes contributing to these losses is the fact that conventional recognisers take into consideration feature values that are outliers. The method that we call bounded-distance HMM is a suitable method to avoid that outliers contribute to the recogniser decision. However, this method just deals with outliers, leaving the remaining features unaltered. In contrast, spectral subtraction is able to correct all the features at the expense of introducing some artifacts that, as shown in the paper, cause a larger number of outliers. As a result, we find that bounded-distance HMM and spectral subtraction complement each other we...
The objective of this paper is threefold: ( 1) to provide an extensive review of signal subspace spe...
Automatic speech recognition (ASR) decodes speech signals into text. While ASR can produce accurate ...
State-of-the-art speech recognition relies on a state-dependent distance measure. In HMM systems, th...
Additive noise generates important losses in automatic speech recognition systems. In this paper, we...
This correspondence addresses the problem of speech recognition with signals corrupted by additive n...
ICSLP2004: the 8th International Conference on Spoken Language Processing, October 4-8, 2004, Jeju ...
In this paper, we propose a novel approach to robust speech recognition in noisy environments by dis...
The use of feature enhancement techniques to obtain estimates of the clean parameters is a common ap...
ICSLP2002: the 7th International Conference on Spoken Language Processing , September 16-20, 2002, ...
It is well known that additive noise can cause a significant decrease in performance for an automati...
This paper presents a spectral normalisation based method for extraction of speech robust features i...
Much research has been focused on the problem of achieving automatic speech recognition (ASR) which ...
[[abstract]]© 1999 Elsevier - When a speech recognition system is deployed in the real world, enviro...
This paper presents a novel approach for reconstructing unre-liable spectral components, which utili...
Abstract – Most of the presently available speech recognition systems work efficiently only in some ...
The objective of this paper is threefold: ( 1) to provide an extensive review of signal subspace spe...
Automatic speech recognition (ASR) decodes speech signals into text. While ASR can produce accurate ...
State-of-the-art speech recognition relies on a state-dependent distance measure. In HMM systems, th...
Additive noise generates important losses in automatic speech recognition systems. In this paper, we...
This correspondence addresses the problem of speech recognition with signals corrupted by additive n...
ICSLP2004: the 8th International Conference on Spoken Language Processing, October 4-8, 2004, Jeju ...
In this paper, we propose a novel approach to robust speech recognition in noisy environments by dis...
The use of feature enhancement techniques to obtain estimates of the clean parameters is a common ap...
ICSLP2002: the 7th International Conference on Spoken Language Processing , September 16-20, 2002, ...
It is well known that additive noise can cause a significant decrease in performance for an automati...
This paper presents a spectral normalisation based method for extraction of speech robust features i...
Much research has been focused on the problem of achieving automatic speech recognition (ASR) which ...
[[abstract]]© 1999 Elsevier - When a speech recognition system is deployed in the real world, enviro...
This paper presents a novel approach for reconstructing unre-liable spectral components, which utili...
Abstract – Most of the presently available speech recognition systems work efficiently only in some ...
The objective of this paper is threefold: ( 1) to provide an extensive review of signal subspace spe...
Automatic speech recognition (ASR) decodes speech signals into text. While ASR can produce accurate ...
State-of-the-art speech recognition relies on a state-dependent distance measure. In HMM systems, th...