5th European Conference on Speech Communication and Technology

Rhodes, Greece
September 22-25, 1997

Comparing Gaussian and Polynomial Classification in SCHMM-Based Recognition Systems

Alfred Kaltenmeier, Jürgen Franke

Daimler Benz AG, Research Institute, Ulm, Germany

Semi-continuous Hidden Markov Models (SCHMM) with gaussian distributions are often used in continuous speech or handwriting recognition systems. Our paper compares gaussian and tree-structured polynomial classiffiers which have been successfully used in pattern recognition since many years. In our system the binary classiffier tree is generated by clustering HMM states using an entropy measure. For handwriting recognition, gaussians are clearly outperformed by polynomial classiffication. However, for speech recognition, polynomial classiffication currently performs slightly worse because some system parameters are not yet optimized.

Full Paper

Bibliographic reference.  Kaltenmeier, Alfred / Franke, Jürgen (1997): "Comparing Gaussian and polynomial classification in SCHMM-based recognition systems", In EUROSPEECH-1997, 115-118.