Title :
Prototype-based discriminative training for various speech units
Author :
McDermott, Erik ; Katagiri, Shigeru
Author_Institution :
ATR Auditory & Visual Perception Res. Lab., Kyoto, Japan
Abstract :
It has since been shown that learning vector quantisation (LVQ) is a special case of a more general method, generalized probabilistic descent (GPD), for gradient descent on a rigorously defined classification loss measure that closely reflects the misclassification rate. The authors to extend LVQ into a prototype-based classifier appropriate for the classification of various long speech units. For word recognition, a dynamic time warping procedure is integrated into the GPD learning procedure. The resulting minimum error classifier (MEC) is no longer a purely LVQ-like method, and it is called the prototype-based minimum error classifier (PBMEC). Results for the difficult Bell Labs E-set task as well as for speaker-dependent isolated word recognition for a vocabulary of 5240 words are presented. They reveal clear gains in performance as a result of using PBMEC
Keywords :
learning (artificial intelligence); neural nets; speech recognition; vector quantisation; Bell Labs E-set task; LVQ; classification loss measure; discriminative training; dynamic time warping procedure; generalized probabilistic descent; gradient descent; learning procedure; learning vector quantisation; long speech units; minimum error classifier; misclassification rate; neural networks; prototype-based classifier; speaker-dependent isolated word recognition; Bayesian methods; Laboratories; Loss measurement; Performance evaluation; Performance gain; Prototypes; Speech; Vector quantization; Visual perception; Vocabulary;
Conference_Titel :
Acoustics, Speech, and Signal Processing, 1992. ICASSP-92., 1992 IEEE International Conference on
Conference_Location :
San Francisco, CA
Print_ISBN :
0-7803-0532-9
DOI :
10.1109/ICASSP.1992.225883