Paper

Discriminative feature and model design for automatic speech recognition

A system for discriminative feature and model design is presented for automatic speech recognition. Training based on minimum classification error with a single objective function is applied for designing a set of parallel networks performing feature transformation and a set of hidden Markov models performing speech recognition. This paper compares the use of linear and non-linear functional transformations when applied to conventional recognition features, such as spectrum or cepstrum. It also provides a framework for integrated feature and model training when using class-specific transformations. Experimental results on telephone-based connected digit recognition are presented. 1. INTRODUCTION Improving the performance of hidden Markov model (HMM) based automatic speech recognition (ASR) systems has been a central issue that has dominated the entire field of speech recognition during the past two decades. One effort to improving HMMs has been by extending the training paradigm beyo...

5th European Conference on Speech Communication and Technology (Eurospeech 1997)Published 1997-09-22Paper link

Authors: Mazin Rahim · Yoshua Bengio · Yann LeCun

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