An efficient handwritten Bangla character recognition system using computer vision and natural language processing
Abstract
An efficient handwritten character recognition system for an alpha-syllabary language
like Bangla has always been a challenging issue. Despite being in demand,
the number of papers being conducted on this was very infrequent. Alongside computer
vision, our paper proposes the idea of using grapheme segmentation approach
to create an effective system for handwritten Bangla character recognition. The
system profoundly deals with the image of handwritten Bangla characters to preprocess
through Computer Vision. To achieve the efficiency, we have segregated each
Bangla word into grapheme roots and diacritics, whether its simple or compound
character. Through these segments, we compare the roots and diacritics individually
with the given dataset to recognise the characters. Thus, this system is capable of
coping up with the limitations that previous models have by recognising any handwritten
Bangla characters efficiently with great accuracy of 0.98357, 0.98208 and
0.94325 for vowel diacritics, consonant diacritics and grapheme root respectively.
For proper reconstructed grapheme representation as output, we have approached
a reconstruction method with grapheme segmentation. Thus, the implementation
of efficient handwritten character recognition was achieved by computer vision and
grapheme approach from NLP.