Multiconditional Modeling is widely used to create noise-robust speaker recognition systems. However, the approach is computationally intensive. An alternative is to optimize the training condition set in order to achieve maximum noise robustness while using the smallest possible number of noise conditions during training. This paper establishes the optimal conditions for a noise-robust training model by considering audio material at different sampling rates and with different coding methods. Our results demonstrate that using approximately four training noise conditions is sufficient to guarantee robust models in the 60 dB to 10 dB Signal-to-Noise Ratio (SNR) range
This paper presents a method for extraction of speech robust features when the external noise is add...
Recognition and classification of speech content in everyday environments is challenging due to the ...
In most of state-of-the-art speech recognition systems, Gaussian mixture models (GMMs) are used to ...
Gaussian Mixture Models (GMMs) are the most widely used technique for voice modeling in automatic sp...
Speaker recognition can be used as a security means to authenticate the speaker or as a forensic too...
This paper presents a multiple-model framework for noise-robust speech recognition. In this framewor...
The closed-set speaker identification problem is defined as the search within a set of persons for t...
Automatic speech recognition (ASR) performance falls dramatically with the level of mismatch between...
Colloque avec actes et comité de lecture. internationale.International audienceNoise degrades the pe...
It is well known that additive noise can cause a significant decrease in performance for an automati...
Voice recognition has become a more focused and researched field in the last century, and new techn...
Abstract: Speaker identification performance in noise is compared with that for clean speech. A mult...
The hypothesis that for a given amount of training data a speaker model has an optimum number of com...
Notwithstanding the many years of research, more work is needed to create automatic speech recogniti...
In this paper, we motivate the introduction of multiple feature streams to cover the gap between the...
This paper presents a method for extraction of speech robust features when the external noise is add...
Recognition and classification of speech content in everyday environments is challenging due to the ...
In most of state-of-the-art speech recognition systems, Gaussian mixture models (GMMs) are used to ...
Gaussian Mixture Models (GMMs) are the most widely used technique for voice modeling in automatic sp...
Speaker recognition can be used as a security means to authenticate the speaker or as a forensic too...
This paper presents a multiple-model framework for noise-robust speech recognition. In this framewor...
The closed-set speaker identification problem is defined as the search within a set of persons for t...
Automatic speech recognition (ASR) performance falls dramatically with the level of mismatch between...
Colloque avec actes et comité de lecture. internationale.International audienceNoise degrades the pe...
It is well known that additive noise can cause a significant decrease in performance for an automati...
Voice recognition has become a more focused and researched field in the last century, and new techn...
Abstract: Speaker identification performance in noise is compared with that for clean speech. A mult...
The hypothesis that for a given amount of training data a speaker model has an optimum number of com...
Notwithstanding the many years of research, more work is needed to create automatic speech recogniti...
In this paper, we motivate the introduction of multiple feature streams to cover the gap between the...
This paper presents a method for extraction of speech robust features when the external noise is add...
Recognition and classification of speech content in everyday environments is challenging due to the ...
In most of state-of-the-art speech recognition systems, Gaussian mixture models (GMMs) are used to ...