Design of CNN architecture for Hindi Characters

Handwritten character recognition is a challenging problem which received attention because of its potential benefits in real-life applications. It automates manual paper work, thus saving both time and money, but due to low recognition accuracy it is not yet practically possible. This work achieves...

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Bibliographic Details
Published in:Advances in distributed computing and artificial intelligence journal Vol. 7; no. 3; pp. 47 - 62
Main Authors: Yadav, Madhuri, Kr Purwar, Ravindra, Jain, Anchal
Format: Journal Article
Language:English
Published: Salamanca Ediciones Universidad de Salamanca 01-01-2018
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Summary:Handwritten character recognition is a challenging problem which received attention because of its potential benefits in real-life applications. It automates manual paper work, thus saving both time and money, but due to low recognition accuracy it is not yet practically possible. This work achieves higher recognition rates for handwritten isolated characters using Deep learning based Convolutional neural network (CNN). The architecture of these networks is complex and plays important role in success of character recognizer, thus this work experiments on different CNN architectures, investigates different optimization algorithms and trainable parameters. The experiments are conducted on two different types of grayscale datasets to make this work more generic and robust. One of the CNN architecture in combination with adadelta optimization achieved a recognition rate of 97.95%. The experimental results demonstrate that CNN based end-to-end learning achieves recognition rates much better than the traditional techniques.
ISSN:2255-2863
2255-2863
DOI:10.14201/ADCAIJ2018734762