Robust Speech Recognition for Unknown Communication Channels

Pont-à-Mousson, France
April 17-18, 1997

Recent Advances in Robust Speech Recognition

Sadaoki Furui

NTT Human Interface Laboratories; Tokyo Institute of Technology, Tokyo, Japan

This paper overviews the main technologies that have recently been developed for making speech recognition systems more robust at both the acoustic and linguistic processing levels. These technologies are reviewed from the viewpoint of a stochastic pattern matching paradigm for speech recognition. Improved robustness enables better speech recognition over a wide range of unexpected and adverse conditions by reducing mismatches between training and testing speech utterances. This paper focuses on supervised vs. unsupervised adaptation techniques, the Bayesian adaptive learning approach, the minimum classification error (MCE/GPD) approach, the parallel model combination (PMC, HMM composition) technique, and spontaneous speech recognition techniques.

Full Paper

Bibliographic reference.  Furui, Sadaoki (1997): "Recent advances in robust speech recognition", In RSR-1997, 11-20.