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Handwritten Numerals Recognition by Employing a Transfer Learned Deep Convolution Neural Network for Diverse Literature

机译:手写的数字通过雇用转移学习的深度卷积神经网络进行多种文学

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Having around 6,500 languages worldwide, handwritten numerals recognition has been a domain of research for decades now as numerals are a common phenomenon among all these diverse languages. Previously, researchers have contributed significantly to recognize the handwritten numerals of diverse literature. Different approaches have been discovered to be feasible for language-specific numerals recognition. However, finding a common architecture to recognize numerals have been a goal from the very beginning. But despite having many efforts, discovering a common architecture for high recognition of numerals of diverse literature has always been a challenging task to solve and not many contributions have been made in this regard. Therefore, in this research, we focused on seven benchmark datasets of six languages and proposed a modified DenseNet-201 architecture. Our proposed architecture achieved an overall accuracy of 99.04%, 99.33%, 98.83%, 99.50%, 99.83%, 99.54%, and 99.74% for Bengali (CMATERdb 3.1.1), Devanagari (CMATERdb 3.2.1), Arabic (CMATERdb 3.3.1), Telugu (CMATERdb 3.4.1), Nepali, ARDIS II, and ARDIS III datasets respectively which outperformed all notable previous works by a noteworthy margin.
机译:在全球范围内拥有大约6,500种语言,手写的数字识别是几十年来研究的域名,因为数字是所有这些不同语言中的常见现象。此前,研究人员对识别不同文献的手写标号做出了重大贡献。已经发现不同的方法对于语言特定的数字识别是可行的。然而,找到一个识别数字的常见架构一开始就是一个目标。尽管有很多努力,但发现了高度识别各种文学数字的共同架构一直是解决问题的具有挑战性的任务,而且在这方面取得了许多贡献。因此,在本研究中,我们专注于七种语言的七个基准数据集,并提出了修改的DENSENET-201架构。我们拟议的架构实现了99.04%,99.33%,98.83%,99.50%,99.83%,99.54%,99.74%,99.54%和99.74%,德那古(Cmaterdb 3.2.1),阿拉伯语(CMATERDB 3.3 .1),Telugu(CMATERDB 3.4.1),尼泊尔,ARDIS II和ARDIS III数据集,其特征优于一个值得注意的保证金。

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