Time-Warping Network: A Hybrid Framework for Speech Recognition
Levin, Esther, Pieraccini, Roberto, Bocchieri, Enrico
–Neural Information Processing Systems
Such systems attempt to combine the best features of both models: the temporal structure of HMMs and the discriminative power of neural networks. In this work we define a time-warping (1W) neuron that extends the operation of the fonnal neuron of a back-propagation network by warping the input pattern to match it optimally to its weights. We show that a single-layer network of TW neurons is equivalent to a Gaussian density HMMbased recognition system.
Neural Information Processing Systems
Dec-31-1992