holistic farsi handwritten word recognition using gradient features

Authors

z. imani

z. ahmadyfard

a. zohrevand

abstract

in this paper we address the issue of recognizing farsi handwritten words. two types of gradient features are extracted from a sliding vertical stripe which sweeps across a word image. these are directional and intensity gradient features. the feature vector extracted from each stripe is then coded using the self organizing map (som). in this method each word is modeled using the discrete hidden markov model (hmm). to evaluate the performance of the proposed method, farsa dataset has been used. the experimental results show that the proposed system, applying directional gradient features, has achieved the recognition rate of 69.07% and outperformed all other existing methods.

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Journal title:
journal of ai and data mining

Publisher: shahrood university of technology

ISSN 2322-5211

volume 4

issue 1 2016

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