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Augmentation based Convolutional Neural Network for recognition of Handwritten Gujarati Characters

机译:基于增强的卷积神经网络,用于识别手写的Gujarati字符

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The aim of this research is to construct handwritten Gujarati characters' dataset as well as their recognition using Convolutional Neural Network (CNN). Handwritten Character Recognition (HCR) is an electronic translation of handwritten text to editable machine text. It is more challenging due to lots of variation in writing style, characters' thickness, and curves of different age groups. The dataset is collected from the primary school in Gujarat, India and preprocessed in MATLAB using various techniques, such as Segmentation, Equalization, Skeletonization, Dilation, and Merging. Deep Learning techniques can be utilized to overcome the various challenges which are faced while recognizing handwritten characters. Therefore, CNN with Dropouts, Augmentation and Multi-Layer Perceptron (MLP) is employed as classifier. The proposed system has achieved maximum training accuracy of 98.6% and testing accuracy of 94.8%.
机译:本研究的目的是使用卷积神经网络(CNN)构建手写的Gujarati字符的数据集及其识别。手写字符识别(HCR)是手写文本到可编辑机器文本的电子翻译。由于写作风格,字符的厚度和不同年龄组曲线的许多变化,它更具挑战性。数据集是从古吉拉特邦,印度的小学收集的,并使用各种技术预处理Matlab,例如分段,均衡,骨架化,扩张和合并。可以利用深度学习技术来克服识别手写字符的各种挑战。因此,采用具有辍学,增强和多层Perceptron(MLP)的CNN作为分类器。所提出的系统已经实现了最大训练准确度为98.6%,测试准确性为94.8%。

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