Hybrid NN/HMM-Based Speech Recognition with a Discriminant Neural Feature Extraction
Willett, Daniel, Rigoll, Gerhard
–Neural Information Processing Systems
In this paper, we present a novel hybrid architecture for continuous speech recognition systems. It consists of a continuous HMM system extended by an arbitrary neural network that is used as a preprocessor that takes several frames of the feature vector as input to produce more discriminative feature vectors with respect to the underlying HMM system. This hybrid system is an extension of a state-of-the-art continuous HMM system, and in fact, it is the first hybrid system that really is capable of outperforming these standard systems with respect to the recognition accuracy. Experimental results show an relative error reduction of about 10% that we achieved on a remarkably good recognition system based on continuous HMMs for the Resource Management 1 OOO-word continuous speech recognition task.
Neural Information Processing Systems
Dec-31-1998