A new class of Support Vector Machine (SVM) that is applicable to sequential-pattern recognition such as speech recognition is developed by incorporating an idea of non-linear time alignment into the kernel function. Since the time-alignment operation of sequential pattern is embedded in the new kernel function, standard SVM training and classification algorithms can be employed without further modifications. The proposed SVM (DTAK-SVM) is evaluated in speaker-dependent speech recognition experiments of hand-segmented phoneme recognition. Preliminary experimental results show comparable recognition performance with hidden Markov models (HMMs)
We describe a new method for phoneme sequence recognition given a speech utterance. In contrast to H...
Automatic Speech Recognition (ASR) is essentially a problem of pattern classification, however, the...
Although discriminative approaches like the support vector machine or logistic regression have had g...
A new class of Support Vector Machine (SVM) that is applica-ble to sequential-pattern recognition su...
We propose in this paper a new family of kernels to handle times series, notably speech data, within...
The improved theoretical properties of Support Vector Machines with respect to other machine learnin...
Hidden Markov Models (HMMs) are, undoubtedly, the most employed core technique for Automatic Speech ...
We describe and analyze a discriminative algorithm for learning to align a phoneme sequence of a spe...
There are two paradigms for modelling the varying length temporal data namely, modelling the sequenc...
Hidden Markov Models (HMMs) are, undoubtedly, the most employed core technique for Automatic Speech ...
In this paper we study the efficiency of support vector ma-chines (SVM) with alignment kernels in au...
Template-matching and discriminative techniques, like support vector machines (SVMs), have been wide...
We describe the use of Support Vector Machines for phonetic classification on the TIMIT corpus. Unli...
We describe a new method for phoneme sequence recognition given a speech utterance, which is not bas...
We describe a new method for phoneme sequence recognition given a speech utterance. In contrast to H...
Automatic Speech Recognition (ASR) is essentially a problem of pattern classification, however, the...
Although discriminative approaches like the support vector machine or logistic regression have had g...
A new class of Support Vector Machine (SVM) that is applica-ble to sequential-pattern recognition su...
We propose in this paper a new family of kernels to handle times series, notably speech data, within...
The improved theoretical properties of Support Vector Machines with respect to other machine learnin...
Hidden Markov Models (HMMs) are, undoubtedly, the most employed core technique for Automatic Speech ...
We describe and analyze a discriminative algorithm for learning to align a phoneme sequence of a spe...
There are two paradigms for modelling the varying length temporal data namely, modelling the sequenc...
Hidden Markov Models (HMMs) are, undoubtedly, the most employed core technique for Automatic Speech ...
In this paper we study the efficiency of support vector ma-chines (SVM) with alignment kernels in au...
Template-matching and discriminative techniques, like support vector machines (SVMs), have been wide...
We describe the use of Support Vector Machines for phonetic classification on the TIMIT corpus. Unli...
We describe a new method for phoneme sequence recognition given a speech utterance, which is not bas...
We describe a new method for phoneme sequence recognition given a speech utterance. In contrast to H...
Automatic Speech Recognition (ASR) is essentially a problem of pattern classification, however, the...
Although discriminative approaches like the support vector machine or logistic regression have had g...