We present an algorithm for identifying the location of sibilant phones in noisy speech. Our algorithm does not attempt to identify sibilant onsets and offsets directly but instead detects a sustained increase in power over the en-tire duration of a sibilant phone. The normalized esti-mate of the sibilant power in each of 14 frequency bands forms the input to two Gaussian mixture models that are trained on sibilant and non-sibilant frames respectively. The likelihood ratio of the two models is then used to classify each frame. We evaluate the performance of our algorithm on the TIMIT database and demonstrate that the classification accuracy is over 80 % at 0 dB signal to noise ratio for additive white noise. Index Terms: sibilant speech, sp...
The statistical theory of speech recognition introduced several decades ago has brought about low wo...
Performance of automatic speech recognition relies on a vast amount of training speech data mostly r...
Speech recognition systems intended for everyday use must be able to cope with a large variety of no...
The application of speaker recognition technologies on domotic systems, cars, or mobile devices such...
Background environmental noises degrade the performance of speech-processing systems (e.g. speech co...
The accurate extraction of two particular features from the speech signal affected by additive white...
Speech enhancement in stationary noise is addressed using the ideal channel selection framework. In ...
In this paper, we evaluate the performance of an implicit approach for the automatic detection of br...
The implementation of the source localization in MATLAB showed satisfactory results, where the syste...
A classification method is presented that detects the presence of speech embedded in a real acoustic...
This paper introduces a word boundary detection algorithm that works in a variety of noise condition...
We introduce the problem of phone classification in the context of speech recognition, and explore s...
Abstract — Low-audible speech detection is important since it conveys significant amount of speaker ...
The performance of automatic speech recognition (ASR) is known to degrade under noise corruption. Su...
<p>Left panels show the SI performances using the features extracted from the lower frequencies (nar...
The statistical theory of speech recognition introduced several decades ago has brought about low wo...
Performance of automatic speech recognition relies on a vast amount of training speech data mostly r...
Speech recognition systems intended for everyday use must be able to cope with a large variety of no...
The application of speaker recognition technologies on domotic systems, cars, or mobile devices such...
Background environmental noises degrade the performance of speech-processing systems (e.g. speech co...
The accurate extraction of two particular features from the speech signal affected by additive white...
Speech enhancement in stationary noise is addressed using the ideal channel selection framework. In ...
In this paper, we evaluate the performance of an implicit approach for the automatic detection of br...
The implementation of the source localization in MATLAB showed satisfactory results, where the syste...
A classification method is presented that detects the presence of speech embedded in a real acoustic...
This paper introduces a word boundary detection algorithm that works in a variety of noise condition...
We introduce the problem of phone classification in the context of speech recognition, and explore s...
Abstract — Low-audible speech detection is important since it conveys significant amount of speaker ...
The performance of automatic speech recognition (ASR) is known to degrade under noise corruption. Su...
<p>Left panels show the SI performances using the features extracted from the lower frequencies (nar...
The statistical theory of speech recognition introduced several decades ago has brought about low wo...
Performance of automatic speech recognition relies on a vast amount of training speech data mostly r...
Speech recognition systems intended for everyday use must be able to cope with a large variety of no...