The full modulation spectrum is a high-dimensional representation of one-dimensional audio signals. Most previous research in automatic speech recognition converted this very rich representation into the equivalent of a sequence of short-time power spectra, mainly to simplify the computation of the posterior probability that a frame of an unknown speech signal is related to a specific state. In this paper we use the raw output of a modulation spectrum analyser in combination with sparse coding as a means for obtaining state posterior probabilities. The modulation spectrum analyser uses 15 gammatone filters. The Hilbert envelope of the output of these filters is then processed by nine modulation frequency filters, with bandwidths up to 16 Hz...
Two approaches for modulation spectrum equalization are proposed for robust feature extraction in sp...
Recognition and classification of speech content in everyday environments is challenging due to the ...
Recognition and classification of speech content in everyday environments is challenging due to the ...
Contains fulltext : 132233.pdf (publisher's version ) (Open Access)The full modula...
Sparse coding of the modulation spectrum for noise-robust automatic speech recognitio
This paper proposes learning-based methods for mapping a sparse representation of noisy speech to st...
This paper investigates a computational model that combines a frontend based on an auditory model wi...
Item does not contain fulltextThis paper investigates a computational model that combines a frontend...
Non-negative spectral factorisation with long temporal context has been successfully used for noise ...
[[abstract]]In this paper, we present two novel algorithms to improve the noise robustness of featur...
[[abstract]]In this paper, we present two novel algorithms to improve the noise robustness of featur...
[[abstract]]In this paper, we present two novel algorithms to improve the noise robustness of featur...
[[abstract]]In this paper, we present two novel algorithms to improve the noise robustness of featur...
[[abstract]]In this paper, we present two novel algorithms to improve the noise robustness of featur...
A new approach to automatic speech recognition based on independent class-conditional probability es...
Two approaches for modulation spectrum equalization are proposed for robust feature extraction in sp...
Recognition and classification of speech content in everyday environments is challenging due to the ...
Recognition and classification of speech content in everyday environments is challenging due to the ...
Contains fulltext : 132233.pdf (publisher's version ) (Open Access)The full modula...
Sparse coding of the modulation spectrum for noise-robust automatic speech recognitio
This paper proposes learning-based methods for mapping a sparse representation of noisy speech to st...
This paper investigates a computational model that combines a frontend based on an auditory model wi...
Item does not contain fulltextThis paper investigates a computational model that combines a frontend...
Non-negative spectral factorisation with long temporal context has been successfully used for noise ...
[[abstract]]In this paper, we present two novel algorithms to improve the noise robustness of featur...
[[abstract]]In this paper, we present two novel algorithms to improve the noise robustness of featur...
[[abstract]]In this paper, we present two novel algorithms to improve the noise robustness of featur...
[[abstract]]In this paper, we present two novel algorithms to improve the noise robustness of featur...
[[abstract]]In this paper, we present two novel algorithms to improve the noise robustness of featur...
A new approach to automatic speech recognition based on independent class-conditional probability es...
Two approaches for modulation spectrum equalization are proposed for robust feature extraction in sp...
Recognition and classification of speech content in everyday environments is challenging due to the ...
Recognition and classification of speech content in everyday environments is challenging due to the ...