A novel method for speech recognition is presented, utilizing nonlinear/chaotic signal processing techniques to extract time-domain based, reconstructed phase space derived features. By exploiting the theoretical results derived in nonlinear dynamics, a distinct signal processing space called a reconstructed phase space can be generated where salient features (the natural distri-bution and trajectory of the attractor) can be extracted for speech recognition. To discover the discriminatory strength of these reconstructed phase space derived features, isolated phoneme classification experiments are executed using the TIMIT corpus and are compared to a baseline classifier that uses Mel frequency cepstral coefficient features (MFCCs). The resul...
This paper presents a study of the attractor variation in the reconstructed phase spaces of isolated...
A novel method for classifying speech phonemes is presented. Unlike traditional cepstral based metho...
This paper introduces a novel approach to the analysis and classification of time series signals usi...
The paper presents a novel method for speech recognition by utilizing nonlinear/chaotic signal proce...
A novel method for speech recognition is presented, utilizing nonlinear/chaotic signal processing te...
This paper presents a novel method for speech recognition by utilizing nonlinear/chaotic signal proc...
This paper presents a novel method for speech recognition by utilizing nonlinear/chaotic signal proc...
A novel method for speech recognition is presented, utilizing nonlinear/chaotic signal processing te...
A novel method for speech recognition is presented, utilizing nonlinear/chaotic signal processing te...
A novel method for classification of speech phonemes, based on the combination of dynamical systems ...
A speech recognition system implements the task of automatically transcribing speech into text. As c...
A novel method combining filter banks and reconstructed phase spaces is proposed for the modeling an...
This paper examines the use of multi-band reconstructed phase spaces as models for phoneme classific...
Due to the shortcomings of linear feature parameters in speech signals, and the limitations of exist...
This paper introduces a novel time-domain approach to modeling and classifying speech phoneme wavefo...
This paper presents a study of the attractor variation in the reconstructed phase spaces of isolated...
A novel method for classifying speech phonemes is presented. Unlike traditional cepstral based metho...
This paper introduces a novel approach to the analysis and classification of time series signals usi...
The paper presents a novel method for speech recognition by utilizing nonlinear/chaotic signal proce...
A novel method for speech recognition is presented, utilizing nonlinear/chaotic signal processing te...
This paper presents a novel method for speech recognition by utilizing nonlinear/chaotic signal proc...
This paper presents a novel method for speech recognition by utilizing nonlinear/chaotic signal proc...
A novel method for speech recognition is presented, utilizing nonlinear/chaotic signal processing te...
A novel method for speech recognition is presented, utilizing nonlinear/chaotic signal processing te...
A novel method for classification of speech phonemes, based on the combination of dynamical systems ...
A speech recognition system implements the task of automatically transcribing speech into text. As c...
A novel method combining filter banks and reconstructed phase spaces is proposed for the modeling an...
This paper examines the use of multi-band reconstructed phase spaces as models for phoneme classific...
Due to the shortcomings of linear feature parameters in speech signals, and the limitations of exist...
This paper introduces a novel time-domain approach to modeling and classifying speech phoneme wavefo...
This paper presents a study of the attractor variation in the reconstructed phase spaces of isolated...
A novel method for classifying speech phonemes is presented. Unlike traditional cepstral based metho...
This paper introduces a novel approach to the analysis and classification of time series signals usi...