Handwritten English Character Recognition using Pixel Density Gradient Method
Keywords:
Artificial Neural Networks, Pixel Density Gradien, Segments, Handwritten CharacterAbstract
Handwritten character recognition is a subject of importance in these days. Artificial Neural Networks (ANNs) are very much in demand in order to accomplish the task and that is why mass research is also going on in this field. This paper is an approach to identify handwritten characters by observing the gradient of the pixel densities at different segments of the handwritten characters. Different segments of the characters are observed carefully with the help of generated computer programs and rigorous experiments. It is found that the pixel densities at various segments of the character image matrix of different alphabets vary. The gradient of the pixel densities in these segments are used to form unique codes for different alphabets, which are found standard for different variations of same alphabet. Generation of unique codes actually extracts out common features of a particular alphabet written by one or more individuals at different instants of time. The unique codes formed for different alphabets are used to recognize different test alphabets. The method developed in this paper is a feature extraction technique which uses self organizing neural network, where supervised learning is not required.
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