一个DHCR_SmartNet:一个智能Devanagari手写字符识别使用水平智慧CNN架构DHCR_SmartNet

S. Deore
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引用次数: 0

摘要

手写体识别是机器学习领域的一个重要应用。自动车牌检测、pin码检测和管理历史文件等应用越来越多地关注手写文字识别。英语是使用最广泛的语言,因此有很多关于使用机器识别文字的研究。Devanagari是印度次大陆上大量人使用的流行文字。本文提出了基于卷积神经网络(CNN) VGG16模型的水平智能高效迁移学习方法,用于Devanagari孤立手写体汉字的识别。在这项工作中,Devanagari字符的新数据集被提出并公开访问。新创建的数据集包含12个元音、36个辅音和10个数字的5800个样本。首先在这个新的小数据集上实现和训练简单的CNN。第二阶段对VGG16模型进行迁移学习,最后对VGG16模型进行微调。微调模型的训练和测试准确率分别为98.16%和96.47%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A DHCR_SmartNet: A smart Devanagari Handwritten Character Recognition using Level-wised CNN Architecture DHCR_SmartNet
Handwritten Script Recognition is a vital application of Machine Learning domain. Applications like automatic number plate detection, pin code detection and managing historical documents increasing more attention towards handwritten script recognition. English is the most widely spoken language, hence there has been a lot of research into identifying a script using a machine. Devanagari is popular script used by a huge number of people in the Indian Subcontinent. In this paper, level-wised efficient transfer learning approach presented on VGG16 model of Convolutional Neural Network (CNN) for identification of Devanagari isolated handwritten characters. In this work a new dataset of Devanagari characters is presented and made accessible publicly. Newly created dataset comprises 5800 samples for 12 vowels, 36 consonants and 10 digits. Initially simple CNN is implemented and trained on this new small dataset. In next stage transfer learning approach is implemented on VGG16 model and in last stage fine-tuned efficient VGG16 model is implemented. The training and testing accuracy of fine-tuned model are obtained as 98.16% and 96.47% respectively.
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