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Handwriting Arabic Character Recognition LeNet Using Neural Network
Character recognition has served as one of the prin cipal proving grounds for neural network methods an d has
emerged as one of the most successful applications of this technology. In this paper, a new network is designed to recognize a
set of handwritten arabic characters. This new netw ork consists of two stages. The first is to recognize the main shape of the
character, and the second stage is for dots recogni tion. Also, the characteristics, structure, and the training algorithm for the
network are presented.
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