This paper presents a novel model compensation (MC) method for the features of mel-frequency cepstral coefficients (MFCCs) with signal-to-noise-ratio- (SNR-) dependent nonuniform spectral compression (SNSC). Though these new MFCCs derived from a SNSC scheme have been shown to be robust features under matched case, they suffer from serious mismatch when the reference models are trained at different SNRs and in different environments. To solve this drawback, a compressed mismatch function is defined for the static observations with nonuniform spectral compression. The means and variances of the static features with spectral compression are derived according to this mismatch function. Experimental results show that the proposed method is able ...
In this paper we study the noise-robustness of mel-frequency cep-stral coefficients (MFCCs) and expl...
We present a non-linear feature-domain noise reduction algorithm based on the minimum mean square er...
The goal of speech parameterization is to extract the relevant information about what is being spoke...
This paper presents a novel model compensation (MC) method for the features of mel-frequency cepstr...
This paper examines the effect of applying noise compensation to acoustic speech feature prediction ...
The performance of automatic speech recognition systems declines dramatically in noisy environments....
[[abstract]]A modified parallel model combination (PMC) for noisy speech recognition is proposed suc...
The Mel Frequency cepstral coefficients are the most widely used feature in speech recognition but t...
This paper presents a method for extracting MFCC parameters from a normalised power spectrum density...
In this paper, a new method for statistical estimation of Mel-frequency cepstral coefficients (MFCCs...
The performance, reliability, and ubiquity of automatic speech recognition systems has flourished in...
The performance, reliability, and ubiquity of automatic speech recognition systems has flourished in...
We propose a method for minimum mean-square error (MMSE) estimation of mel-frequency cepstral featur...
In this paper, we investigate a feature conditioning method for the VTS-based model compensation. Th...
It is a challenge task for maintaining high correct word accuracy rate (WAR) for state-of-art automa...
In this paper we study the noise-robustness of mel-frequency cep-stral coefficients (MFCCs) and expl...
We present a non-linear feature-domain noise reduction algorithm based on the minimum mean square er...
The goal of speech parameterization is to extract the relevant information about what is being spoke...
This paper presents a novel model compensation (MC) method for the features of mel-frequency cepstr...
This paper examines the effect of applying noise compensation to acoustic speech feature prediction ...
The performance of automatic speech recognition systems declines dramatically in noisy environments....
[[abstract]]A modified parallel model combination (PMC) for noisy speech recognition is proposed suc...
The Mel Frequency cepstral coefficients are the most widely used feature in speech recognition but t...
This paper presents a method for extracting MFCC parameters from a normalised power spectrum density...
In this paper, a new method for statistical estimation of Mel-frequency cepstral coefficients (MFCCs...
The performance, reliability, and ubiquity of automatic speech recognition systems has flourished in...
The performance, reliability, and ubiquity of automatic speech recognition systems has flourished in...
We propose a method for minimum mean-square error (MMSE) estimation of mel-frequency cepstral featur...
In this paper, we investigate a feature conditioning method for the VTS-based model compensation. Th...
It is a challenge task for maintaining high correct word accuracy rate (WAR) for state-of-art automa...
In this paper we study the noise-robustness of mel-frequency cep-stral coefficients (MFCCs) and expl...
We present a non-linear feature-domain noise reduction algorithm based on the minimum mean square er...
The goal of speech parameterization is to extract the relevant information about what is being spoke...