ISCA Archive Eurospeech 1993
ISCA Archive Eurospeech 1993

Multiple multilabeling to improve HMM-based speech recognition in noise

J. Hernando, Jose B. Marino, Climent Nadeu

The performance of existing speech recognition systems degrades rapidly in the presence of background noise when training and testing cannot be done under the same ambient conditions. The aim of this paper is to propose the application of a simple multilabeling method, instead of the standard vector quantization -so called labeling-, as the front end for a speech recognizer based on the Vector Quantization (VQ) and Hidden Markov Models (HMM) approaches in order to increase its robustness to noise. Furthermore, not only cepstrum but also other features such as energy and dynamic parameters are evaluated and quantized independently in the multilabeling stage to represent more accurately characteristics of speech. The result of this process is a multiple multilabeling. Experimental results in the presence of additive white noise and car environment clearly demonstrate its good performance in isolated word recognition in noisy environments.

Keywords: Noisy speech recognition, Vector Quantization, Hidden Markov Models.