ISCA Archive ICSLP 1996
ISCA Archive ICSLP 1996

Hidden Markov models merging acoustic and articulatory information to automatic speech recognition

Bruno Jacob, Christine Senac

This paper describes a new scheme for robust speech recognition systems where visual information and acoustic features are merged. Using as robust unit the « pseudo-diphone », we compare a global Hidden Markov Model (HMM) and a Master/Slave HMM through a centisecond preprocessing and through a segmental one. We confirm by experimentation the importance of articulatory features in clean and noisy environments.