Bangali Handwritten characters classification using Deep Convolutional Neural Network
Abstract
Handwritten letter classification of any given language has the potential to be used
in various fields such as literature, educational institutions, digitization of govern ment records etc. Bengali language with its complex sets of mixed characters, poses
significant complexities in terms of automatic recognition of characters. In the
Bengali character set, there are over 360 distinct characters among which a lot
of similarities are present between different characters. Thus, the classification of
these characters gets harder as the recognition system incorporates all these distinct
characters. In recent years, a lot of research has been done to solve this problem
on isolated datasets with significant results. Continuing the advancement in im age processing, In this paper, we have proposed a custom CNN model which has
been trained on Bangla Lekha Isolated dataset containing 1,66,106 images belong
to 84 distinct classes with the capability to detect individual handwritten Bengali
letters including digits, vowels, consonants and compound characters with 93.15%
accuracy while using less number of parameters compared to existing popular models