Bengali character recognition using Bidirectional Associative Memories (BAM) neural network
نویسندگان
چکیده
This paper presents the recognition features of Bengali text using BAM (Bidirectional Associative Memories) neural network with a proposal of feature extraction procedure of a Bengali character. To do this, the conventional methods are used for text scanning to segmentation of a text line to a single character. In this paper an efficient procedure is proposed for boundary extraction, scaling of a character and the BAM neural network which increases the performance of character recognition are used. Keyword: Bengali, Character, Neural Network, BAM (Bidirectional Associative Memories), Feature, Scaling, Recognition.
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