An important aspect of distinctive feature based approaches to automatic speech recognition is the formulation of a framework for robust detection of these features. We discuss the application of the support vector machines (SVM) that arise when the structural risk minimization principle is applied to such feature detection problems. In particular, we describe the problem of detecting stop consonants in continuous peech and discuss an SVM framework for detecting these sounds. In this paper we use both linear and nonlinear SVMs for stop detection and present experimental results to show that they perform better than a cepstral features based hidden Markov model (HMM) system, on the same task. 1
Hidden Markov Models (HMMs) are, undoubtedly, the most employed core technique for Automatic Speech ...
Using discriminative classifiers, such as Support Vector Machines (SVMs) in combination with, or as ...
International audienceThis paper proposes an approach to detect social speech signals by computing s...
We consider the problem of detecting stop consonants in continuously spoken speech. We pose the prob...
Abstract. Support Vector Machines (SVMs) have become a popular tool for discriminative classificatio...
Support Vector Machines (SVMs) represent a new approach to pattern classification which has recently...
The ultimate goal of our research is to develop a computational model of human speech recognition th...
Hidden Markov Models (HMMs) are, undoubtedly, the most employed core technique for Automatic Speech ...
The ultimate goal of our research is to develop a computational model of human speech recognition th...
This paper shows an effective speech/non-speech discrimination method for improving the performance ...
This paper presents a method of augmenting shifted-delta cepstral coefficients (SDCCs) with the clas...
The standard hidden Markov model (HMM) has been proved to be the most successful model for speech re...
For the classical statistical classification algorithms the probability distribution models are know...
Abstract. Generally speech recognition systems make use of acoustic features as a representation of ...
Hidden Markov models (HMM) with Gaussian mixture observation densities are the dominant approach in ...
Hidden Markov Models (HMMs) are, undoubtedly, the most employed core technique for Automatic Speech ...
Using discriminative classifiers, such as Support Vector Machines (SVMs) in combination with, or as ...
International audienceThis paper proposes an approach to detect social speech signals by computing s...
We consider the problem of detecting stop consonants in continuously spoken speech. We pose the prob...
Abstract. Support Vector Machines (SVMs) have become a popular tool for discriminative classificatio...
Support Vector Machines (SVMs) represent a new approach to pattern classification which has recently...
The ultimate goal of our research is to develop a computational model of human speech recognition th...
Hidden Markov Models (HMMs) are, undoubtedly, the most employed core technique for Automatic Speech ...
The ultimate goal of our research is to develop a computational model of human speech recognition th...
This paper shows an effective speech/non-speech discrimination method for improving the performance ...
This paper presents a method of augmenting shifted-delta cepstral coefficients (SDCCs) with the clas...
The standard hidden Markov model (HMM) has been proved to be the most successful model for speech re...
For the classical statistical classification algorithms the probability distribution models are know...
Abstract. Generally speech recognition systems make use of acoustic features as a representation of ...
Hidden Markov models (HMM) with Gaussian mixture observation densities are the dominant approach in ...
Hidden Markov Models (HMMs) are, undoubtedly, the most employed core technique for Automatic Speech ...
Using discriminative classifiers, such as Support Vector Machines (SVMs) in combination with, or as ...
International audienceThis paper proposes an approach to detect social speech signals by computing s...