Speech recognition using optical neural networks

Neural network researchers have recently addressed the problem of speech recognition. Most networks, however, offer solutions to the problem through complicated structures or complicated learning schemes. It is our goal to present extremely simple and fast learning algorithms that provide large discrimination between words. This large discrimination will allow this system to be designed into a simple optical computer architecture with minimum learning and yet maximum computation capacity.

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