juktoMala: A Handwritten Bengali Consonant Conjuncts Dataset for Optical Character Recognition Using BiT-based M-ResNet-101x3 Architecture

M. Hasan, Md. Ali Hossain, Azmain Yakin Srizon, Abu Sayeed
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Abstract

Bengali, the seventh most spoken language in the world by the number of speakers, doesn't have a well-established Optical Character Recognition (OCR) system for handwritten texts. One of the major reasons behind this lacking is contributed to having no complete conjuncts database. No dataset available today covers all the conjunct characters that are used by authors around the globe. In this research, we prepared a complete dataset consisting of 292 consonant conjunct characters, which is the biggest consonant conjunct character dataset to date by the number of classes available in the literature to our knowledge. We applied Big Transfer-based M-ResNet-101x3 Deep Convolutional Neural Network (DCNN) which achieves 91.32% accuracy that outperforms the baseline EfficientNetB7 approach which obtained 81.05% accuracy.
juktoMala:基于位的M-ResNet-101x3架构的用于光学字符识别的手写孟加拉辅音连词数据集
孟加拉语是世界上使用人数排名第七的语言,但它并没有一个完善的光学字符识别(OCR)系统来识别手写文本。这种缺乏背后的一个主要原因是没有完整的连词数据库。目前没有可用的数据集涵盖全球作者使用的所有连词字符。在这项研究中,我们准备了一个由292个辅音连词字符组成的完整数据集,这是迄今为止我们所知的文献中可用类数最多的辅音连词数据集。我们采用基于Big transfer的M-ResNet-101x3深度卷积神经网络(DCNN),其准确率达到91.32%,优于基线方法EfficientNetB7,后者准确率为81.05%。
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