This paper presents a spectral normalisation based method for extraction of speech robust features in additive noise. The method has two main goals: 1) The “peaked” spectral zones, where the most speech energy is concentrated must be preserved (from clean to noisy speech features) as much as possible by the feature extraction process. Usually, these spectral regions are the most reliable due to the higher speech energy, and the frequently assumption of independence between speech and noise. 2) The speech regions with less energy need more robustness, since in these regions the noise is more dominant, thus the speech is more corrupted. Usually these speech regions correspond to unvoiced speech where are included nearly half of the conson...
[[abstract]]In this article, we present an effective compensation scheme to improve noise robustness...
[[abstract]]In this article, we present an effective compensation scheme to improve noise robustness...
[[abstract]]In this article, we present an effective compensation scheme to improve noise robustness...
This paper presents a spectral normalisation based method for extraction of speech robust features i...
This paper presents an improved version of a spectral normalisation based method for extraction of s...
This paper presents an improved version of a spectral normalisation based method for extraction of s...
This paper presents a method for extraction of speech robust features when the external noise is add...
This paper presents an improved version of a spectral normalisation based method for extraction of s...
Abstract: The changing on peaks structure of the speech spectrum is perhaps the most important cause...
This paper presents a method for extracting MFCC parameters from a normalised power spectrum density...
The changing on speech peaks structure is perhaps the most important cause of degradation of speech ...
The changing on speech peaks structure is perhaps the most important cause of degradation of speech ...
The changing on speech peaks structure is perhaps the most important cause of degradation of speech ...
[[abstract]]In this article, we present an effective compensation scheme to improve noise robustness...
[[abstract]]In this article, we present an effective compensation scheme to improve noise robustness...
[[abstract]]In this article, we present an effective compensation scheme to improve noise robustness...
[[abstract]]In this article, we present an effective compensation scheme to improve noise robustness...
[[abstract]]In this article, we present an effective compensation scheme to improve noise robustness...
This paper presents a spectral normalisation based method for extraction of speech robust features i...
This paper presents an improved version of a spectral normalisation based method for extraction of s...
This paper presents an improved version of a spectral normalisation based method for extraction of s...
This paper presents a method for extraction of speech robust features when the external noise is add...
This paper presents an improved version of a spectral normalisation based method for extraction of s...
Abstract: The changing on peaks structure of the speech spectrum is perhaps the most important cause...
This paper presents a method for extracting MFCC parameters from a normalised power spectrum density...
The changing on speech peaks structure is perhaps the most important cause of degradation of speech ...
The changing on speech peaks structure is perhaps the most important cause of degradation of speech ...
The changing on speech peaks structure is perhaps the most important cause of degradation of speech ...
[[abstract]]In this article, we present an effective compensation scheme to improve noise robustness...
[[abstract]]In this article, we present an effective compensation scheme to improve noise robustness...
[[abstract]]In this article, we present an effective compensation scheme to improve noise robustness...
[[abstract]]In this article, we present an effective compensation scheme to improve noise robustness...
[[abstract]]In this article, we present an effective compensation scheme to improve noise robustness...