Binary to multi-level image restoration using neural network

Image analysis – Image enhancement or restoration

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382156, G06K 940

Patent

active

054955424

ABSTRACT:
Use is made of a neural network in order to restore a binary image to an original multi-level image, by way of example. Using the neural network makes it possible to raise the accuracy of restoration and the speed of processing.

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