Improved Hidden Markov Model Speech Recognition Using Radial Basis Function Networks
Singer, Elliot, Lippmann, Richard P.
–Neural Information Processing Systems
The RBF network consists of an input layer, a hidden layer composed of Gaussian basis functions, and an output layer. Connections from the input layer to the hidden layer are fixed at unity while those from the hidden layer to the output layer are trained by minimizing the overall mean-square error between actual and desired output values. Each RBF output node has a corresponding state in a set of HMM word models which represent the words in the vocabulary. HMM word models are left-to-right with no skip states and have a one-state background noise model at either end. The background noise models are identical for all words.
Neural Information Processing Systems
Dec-31-1992