Abstract—In this paper, we have proposed a novel approach
for handwriting recognition system involving segmentation for
preprocessing steps and using diagonal based feature extraction
technique with neutral network for character recognition. Input
is paragraphs of running text, which is preprocessed to segment
it into normalized individual words. Further, a diagonal based
feature extraction technique is used for extracting the features
of handwritten alphabets. A neural network is trained onto the
dataset containing 55 samples for each of the 26 alphabets for
recognition. A new implicit approach for character recognition
is implemented in this paper which segments a character, into
parts dynamically for character recognition from the text, which
improves the accuracy significantly. A feed forward artificial neural network is being used for character classification, which also
helps in deciding the threshold value for the character separation
from the running text word. The proposed recognition system
performs excellently for separate character written documents
with 100% accuracy. It also performs competitively yielding an
accuracy of 75% for readable non-cursive handwriting and 60%
for cursive handwriting.
Abstract—In this paper, we have proposed a novel approachfor handwriting recognition system involving segmentation forpreprocessing steps and using diagonal based feature extractiontechnique with neutral network for character recognition. Inputis paragraphs of running text, which is preprocessed to segmentit into normalized individual words. Further, a diagonal basedfeature extraction technique is used for extracting the featuresof handwritten alphabets. A neural network is trained onto thedataset containing 55 samples for each of the 26 alphabets forrecognition. A new implicit approach for character recognitionis implemented in this paper which segments a character, intoparts dynamically for character recognition from the text, whichimproves the accuracy significantly. A feed forward artificial neural network is being used for character classification, which alsohelps in deciding the threshold value for the character separationfrom the running text word. The proposed recognition systemperforms excellently for separate character written documentswith 100% accuracy. It also performs competitively yielding anaccuracy of 75% for readable non-cursive handwriting and 60%for cursive handwriting.
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