[[abstract]]This paper proposes several cepstral statistics compensation and normalization algorithms which alleviate the effect of additive noise on cepstral features for speech recognition. The algorithms are simple yet efficient noise reduction techniques that use online-constructed pseudo-stereo codebooks to evaluate the statistics in both clean and noisy environments. The process yields transformations for both clean speech cepstra and noise-corrupted speech cepstra, or for noise-corrupted speech cepstra only, so that the statistics of the transformed speech cepstra are similar for both environments. Experimental results show that these codebook-based algorithms can provide significant performance gains compared to results obtained by ...
[[abstract]]Speech model combination with the background noise has been shown effective to improve t...
This dissertation introduces a new approach to estimation of the features used in an automatic speec...
In real-world adverse environments, speech signal corruption by background noise, microphone channel...
[[abstract]]Cepstral statistics normalization techniques have been shown to be very successful at im...
[[abstract]]Cepstral statistics normalization techniques have been shown to be very successful at im...
[[abstract]]Cepstral statistics normalization techniques have been shown to be very successful at im...
In this paper we describe and evaluate a series of new algorithms that compensate for the effects of...
Abstract: The changing on peaks structure of the speech spectrum is perhaps the most important cause...
We study the effectiveness of various microphone robustness techniques from the viewpoint of speech ...
It is well-known that the performance of automatic speech recognition (ASR) systems are easily affec...
In this paper we describe and compare the performance of a series of cepstrum-based procedures that ...
Many new consumer applications are based on the use of automatic speech recognition (ASR) systems, s...
In this paper we describe and compare the performance of a series of cepstrum-based procedures that ...
In this work, normalization techniques in the acoustic feature space are studied which improve the r...
In this paper we describe and compare the performance of a series of cepstrum-based procedures that ...
[[abstract]]Speech model combination with the background noise has been shown effective to improve t...
This dissertation introduces a new approach to estimation of the features used in an automatic speec...
In real-world adverse environments, speech signal corruption by background noise, microphone channel...
[[abstract]]Cepstral statistics normalization techniques have been shown to be very successful at im...
[[abstract]]Cepstral statistics normalization techniques have been shown to be very successful at im...
[[abstract]]Cepstral statistics normalization techniques have been shown to be very successful at im...
In this paper we describe and evaluate a series of new algorithms that compensate for the effects of...
Abstract: The changing on peaks structure of the speech spectrum is perhaps the most important cause...
We study the effectiveness of various microphone robustness techniques from the viewpoint of speech ...
It is well-known that the performance of automatic speech recognition (ASR) systems are easily affec...
In this paper we describe and compare the performance of a series of cepstrum-based procedures that ...
Many new consumer applications are based on the use of automatic speech recognition (ASR) systems, s...
In this paper we describe and compare the performance of a series of cepstrum-based procedures that ...
In this work, normalization techniques in the acoustic feature space are studied which improve the r...
In this paper we describe and compare the performance of a series of cepstrum-based procedures that ...
[[abstract]]Speech model combination with the background noise has been shown effective to improve t...
This dissertation introduces a new approach to estimation of the features used in an automatic speec...
In real-world adverse environments, speech signal corruption by background noise, microphone channel...