Open Access Open Access  Restricted Access Subscription Access

A Lenet-5 Based Bangla Handwritten Digit Recognition Framework

Shishir Sarker, Songita Sarker, Sohanur Rahman, Dr Md. Ismail Jabiullah

Abstract


Hand composed Digit recognition in Bangla language is a valuable beginning stage for creating an Optical Character Recognition in the Bengali language. Be that as it may, Absence of huge and honest data collection, recognition of Bangla digit was not build already. In any case, in this outline, a colossal & honest data source known as NumtaDB is utilized for recognition of Bengali digits. The troublesome endeavour is connected to getting the solid presentation and high precision for gigantic, fair, common, natural and particularly extended NumtaDB dataset. So various sorts of pre-processing frameworks are utilized for planning pictures and a significant convolutional neural network is utilized for the request of representation in this paper. The LeNet-5 architecture based convolutional neural network model has indicated superb execution. We have accomplished 97.5% testing exactness which is a decent outcome for huge and fair NumtaDB dataset contrasting with other one-sided datasets. A wide range of pre-processing of pictures is additionally significant before preparing. We utilize some pre-processing strategies for obscure and loud pictures yet these are insufficient for the elite. An examination of the system brings out the EMNIST and MNIST datasets was performed so as to sustain the appraisal.


Full Text:

PDF

References


B. B. Chaudhuri & U. Pal. A complete printed Bangla OCR system. Pattern recognition.1988.31.5:531-549p.

S. Alam, T. Reasat, R.M. Doha and A.I Humayun. NumtaDB Assenbled Bengali handwritten digits. arXiv:1806.02452 [cs.CV], 6 June, 2018.

M. Shopon, N. Mohammed, and M. A. Abedin, "Bangla handwritten digit recognition using autoencoder and deep convolutional neural network," 2016 International Workshop on Computational Intelligence (IWCI), Dhaka, 2016, 64-68p.

T. Hassan and A.H. Khan. Handwritten Bangla numeral recognition using Local Binary Pattern. In Electrical Engineering and Information Communication Technology (ICEEICT), 2015 International Conference on.1-4p. IEEE, 2015.

U. Bhattacharya and B. B Chaudhuri. Handwritten numeral databases of Indian scripts and multistage recognition of mixed numerals. In IEEE transactions on pattern analysis and machine intelligence, 31(3) on .444-457p. IEEE, 2009.

M.I.H.R.I. M.A.H. Akhand, and M. Ahmed. Convolutional neural network training with artificial pattern for Bangla handwritten numeral recognition. ICIEV.2016.1(1):16p.

S. Afshar, G. Cohen and J. Tapson, A. Schaik. EMNIST: An extension of MNIST to handwritten letters. arXiv:1702.05373[cs.CV], 2017.

Y. Lecun and C. Cortes. The MNIST database of handwritten digits. 1998. [Online]. Available: http://yann.lecun.com/exdb/mnist/ G. Cohen, S. Afshar, and J. Tapson, A. Schaik, “EMNIST: An extension of MNIST to handwritten letters”, arXiv:1702.05373[cs.CV], 2017.

Bengali Ai. NumtaDB: Bengali Handwritten Digits. 2018. [Online]. Available: https://www.kaggle.com/BengaliAI/numta. [Accessed: 608-2018].

R. Gonzalez and R.E. Woods. Digital Image Processing. Third Edition, 162-163p.


Refbacks

  • There are currently no refbacks.