Several speech processing and audio data-mining applications rely on a description of the acoustic environment as a feature vector for classification. The discriminative properties of the feature domain play a crucial role in the effectiveness of these methods. In this work, we consider three environment identification tasks and the task of acoustic model selection for speech recognition. A set of acoustic parameters and Machine Learning algorithms for feature selection are used and an analysis is performed on the resulting feature domains for each task. In our experiments, a classification accuracy of 100% is achieved for the majority of tasks and the Word Error Rate is reduced by 20.73 percentage points for Automatic Speech Recognition wh...
Recently, a new auditory-based feature extraction algorithm for robust speech recognition in noisy e...
A general approach for integrating different acoustic fea-ture sets and acoustic models is presented...
A general approach for integrating different acoustic fea-ture sets and acoustic models is presented...
Several speech processing and audio data-mining applications rely on a description of the acoustic e...
Recently, Li et al. proposed a new auditory feature for robust speech recognition in noise environme...
Speech recognition systems are often highly domain dependent, a fact widely reported in the literatu...
Recently, Li et al. proposed a new auditory feature for robust speech recognition in noise environme...
In this thesis, the use of multiple acoustic features of the speech signal is considered for speech ...
This communication presents a new method for automatic speech recognition in reverber-ant environmen...
We describe a method to select features for speech recognition that is based on a quantitative model...
This work explores discriminative acoustic features: audio signal representations produced by multil...
Conventional speech recognition systems consist of feature extraction, acoustic and language modelin...
The performance of an automatic speech recognition (ASR) system strongly depends on the representati...
The performance of an automatic speech recognition (ASR) system strongly depends on the representati...
Recently, a new auditory-based feature extraction algorithm for robust speech recognition in noisy e...
Recently, a new auditory-based feature extraction algorithm for robust speech recognition in noisy e...
A general approach for integrating different acoustic fea-ture sets and acoustic models is presented...
A general approach for integrating different acoustic fea-ture sets and acoustic models is presented...
Several speech processing and audio data-mining applications rely on a description of the acoustic e...
Recently, Li et al. proposed a new auditory feature for robust speech recognition in noise environme...
Speech recognition systems are often highly domain dependent, a fact widely reported in the literatu...
Recently, Li et al. proposed a new auditory feature for robust speech recognition in noise environme...
In this thesis, the use of multiple acoustic features of the speech signal is considered for speech ...
This communication presents a new method for automatic speech recognition in reverber-ant environmen...
We describe a method to select features for speech recognition that is based on a quantitative model...
This work explores discriminative acoustic features: audio signal representations produced by multil...
Conventional speech recognition systems consist of feature extraction, acoustic and language modelin...
The performance of an automatic speech recognition (ASR) system strongly depends on the representati...
The performance of an automatic speech recognition (ASR) system strongly depends on the representati...
Recently, a new auditory-based feature extraction algorithm for robust speech recognition in noisy e...
Recently, a new auditory-based feature extraction algorithm for robust speech recognition in noisy e...
A general approach for integrating different acoustic fea-ture sets and acoustic models is presented...
A general approach for integrating different acoustic fea-ture sets and acoustic models is presented...