This paper describes a novel and efficient noise-robust front-end that utilizes a set of Mel-filterbank output compensation methods, together with cumulative distribution mapping of cepstral coefficients, for noisy speech recognition. The proposed compensation framework includes the use of noise spectral subtraction, spectral flooring and log Mel-filterbank output weighting. Recognition experiments on the Aurora II connected digit database have revealed that the proposed front-end achieves an average digit recognition accuracy of 83.46 % for a model set trained from clean data. Compared with the recognition results obtained by using the ETSI standard Mel-cepstral front-end, these results represent a relative error reduction of around 58%. 1
[[abstract]]This paper proposes several cepstral statistics compensation and normalization algorithm...
Processing of the speech signal in the autocorrelation domain in the context of robust feature extra...
This paper examines the effect of applying noise compensation to acoustic speech feature prediction ...
This paper describes a novel noise-robust automatic speech recognition (ASR) front-end that employs ...
This paper presents a new front-end for robust speech recognition. This new front-end scenario focus...
LP-based and mel-cepstrum coefficients are by far the most prevalent parameterization techniques in ...
An auditory feature extraction algorithm for robust speech recognition in adverse acoustic environme...
Maintaining a high level of robustness for Automatic Speech Recognition (ASR) systems is especially ...
Previous research has found autocorrelation domain as an appropriate domain for signal and noise sep...
We present a non-linear feature-domain noise reduction algorithm based on the minimum mean square er...
In this paper, a feature extraction algorithm for robust speech recognition is introduced. The featu...
This dissertation introduces a new approach to estimation of the features used in an automatic speec...
[[abstract]]In this article, we present an effective compensation scheme to improve noise robustness...
This dissertation introduces a new approach to estimation of the features used in an automatic speec...
The Mel Frequency cepstral coefficients are the most widely used feature in speech recognition but t...
[[abstract]]This paper proposes several cepstral statistics compensation and normalization algorithm...
Processing of the speech signal in the autocorrelation domain in the context of robust feature extra...
This paper examines the effect of applying noise compensation to acoustic speech feature prediction ...
This paper describes a novel noise-robust automatic speech recognition (ASR) front-end that employs ...
This paper presents a new front-end for robust speech recognition. This new front-end scenario focus...
LP-based and mel-cepstrum coefficients are by far the most prevalent parameterization techniques in ...
An auditory feature extraction algorithm for robust speech recognition in adverse acoustic environme...
Maintaining a high level of robustness for Automatic Speech Recognition (ASR) systems is especially ...
Previous research has found autocorrelation domain as an appropriate domain for signal and noise sep...
We present a non-linear feature-domain noise reduction algorithm based on the minimum mean square er...
In this paper, a feature extraction algorithm for robust speech recognition is introduced. The featu...
This dissertation introduces a new approach to estimation of the features used in an automatic speec...
[[abstract]]In this article, we present an effective compensation scheme to improve noise robustness...
This dissertation introduces a new approach to estimation of the features used in an automatic speec...
The Mel Frequency cepstral coefficients are the most widely used feature in speech recognition but t...
[[abstract]]This paper proposes several cepstral statistics compensation and normalization algorithm...
Processing of the speech signal in the autocorrelation domain in the context of robust feature extra...
This paper examines the effect of applying noise compensation to acoustic speech feature prediction ...