In this paper, we introduce a new class of noise robust features derived from an alternative measure of autocorrelation representing the phase variation of speech signal frame over time. These features, referred to as Phase AutoCorrelation (PAC) features include PAC-spectrum and PAC-MFCC, among others. In traditional autocorrelation, correlation between two time delayed signal vectors is computed as their dot product. Whereas in PAC, angle between the vectors in the signal vector space is used to compute the correlation. PAC features are more noise robust because the angle is typically less affected by noise than the dot product. However, the use of angle as correlation estimate makes the PAC features inferior in clean speech. In this paper...
Model-based techniques for robust speech recognition often require the statistics of noisy speech. I...
The article presents a robust representation of speech based on AR modeling of the causal part of th...
In recent decades, researchers have been focused on developing noise-robust methods in order to comp...
[[abstract]]This paper introduces a new representation of speech that is invariant to noise. The ide...
Previous research has found autocorrelation domain as an appropriate domain for signal and noise sep...
When designing noise robust speech recognition feature extraction algorithms, it is common to assume...
This paper presents a novel noise-robust feature extraction method for speech recognition using the ...
The results of investigations into some aspects of robust speech recognition are reported in this th...
Analytic phase of the speech signal plays an important role in human speech perception, specially in...
Processing of the speech signal in the autocorrelation domain in the context of robust feature extra...
One major concern in the design of speech recognition systems is their performance in real environme...
This paper presents a new front-end for robust speech recognition. This new front-end scenario focus...
Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction...
Abstract. This paper presents a new feature vector set for noisy speech recognition in autocorrelati...
Abstract Autocorrelation domain is a proper domain for clean speech signal and noise separation. In ...
Model-based techniques for robust speech recognition often require the statistics of noisy speech. I...
The article presents a robust representation of speech based on AR modeling of the causal part of th...
In recent decades, researchers have been focused on developing noise-robust methods in order to comp...
[[abstract]]This paper introduces a new representation of speech that is invariant to noise. The ide...
Previous research has found autocorrelation domain as an appropriate domain for signal and noise sep...
When designing noise robust speech recognition feature extraction algorithms, it is common to assume...
This paper presents a novel noise-robust feature extraction method for speech recognition using the ...
The results of investigations into some aspects of robust speech recognition are reported in this th...
Analytic phase of the speech signal plays an important role in human speech perception, specially in...
Processing of the speech signal in the autocorrelation domain in the context of robust feature extra...
One major concern in the design of speech recognition systems is their performance in real environme...
This paper presents a new front-end for robust speech recognition. This new front-end scenario focus...
Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction...
Abstract. This paper presents a new feature vector set for noisy speech recognition in autocorrelati...
Abstract Autocorrelation domain is a proper domain for clean speech signal and noise separation. In ...
Model-based techniques for robust speech recognition often require the statistics of noisy speech. I...
The article presents a robust representation of speech based on AR modeling of the causal part of th...
In recent decades, researchers have been focused on developing noise-robust methods in order to comp...