Title of article :
Deep learning based hand written character recognition for manuscript documents
Author/Authors :
Jerry Alexander, T Faculty of Electronics Engineering - Sathyabama Institute of Science & Technology - IT Highway - Chennai, India , Suresh Kumar, S Swarnandhra College of Engineering & Technology - Narasapur, India , Krishnamoorthy, N.R School of Electrical & Electronics - Sathyabama Institute of Science & Technology - Chennai, India
Abstract :
Handwritten manuscripts contain much ancient information related to astrology, medicines, grammar
etc. They are of various forms such as palm leaves, paper, stones etc. These manuscripts are
preserved by the method of digitization with noise introduced. By using proper filtering as well as
denoising methods these noises are eliminated and the images are restored. It is finally required to
recognize the handwritten characters automatically from the restored image enabling the researchers
and enthusiasts for going through the document very easily. This proposed work deals with the
creation of a handwritten characters dataset for all the characters within a specific dimensional area
and the recognition of handwritten characters using the deep learning method. First, the handwritten
dataset is created from different human handwritings in a specific format, scanned and each character
with suitable dimension is obtained by labelling them as per the sequence. Then various forms of
convolution network are applied for the character recognition and the results are compared to obtain
the suitable net for the Tamil character recognition from the handwritten document.
Keywords :
Character recognition , Convolution Neural Network , Historical Manuscripts , handwritten character recognition , dataset creation , deep learning
Journal title :
International Journal of Nonlinear Analysis and Applications