Applications of Neural Network Models in Automatic Speech Recognition.
Abstract
Organizations of computing elements that follow the principles of physiological neurons, called neural network models, have been shown to have the capability of learning to recognize patterns and to retrieve complete patterns from partial representations. The implementation of neural network models as VLSI or USLI chips within a few years is certain. This report reviews a number of published papers on neural network models and their capabilities. Then, an outline of a speech recognition system that uses neural network modules for learning and recognition is proposed. It is based on the layered structure of existing speech recognition systems, and uses forced learning (feedback) for conditioning the neural modules at the various levels. (Author)
Document Details
- Document Type
- Technical Report
- Publication Date
- Sep 29, 1986
- Accession Number
- ADA174935
Entities
People
- Andrew S. Noetzel
- Thomas Rittenbach
Organizations
- Battelle Memorial Institute