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A Convolution Neural Networks Based Character and Word Recognition System for Similar Script Languages Kannada and Telugu

机译:基于卷积神经网络的类似脚本语言的字符和字识别系统Kannada和Telugu

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This paper presents a cross language platform to recognize characters and words of low resource scripts i.e. scripts which do not have standard dataset and the datasets are not available for public access. Indie scripts come from common origin and some of the scripts have a common 3 zonal structure. Recognition of such scripts can be done with the help of other scripts having similar structure. To recognize these characters the model is trained with source language Kannada with zone-wise training and testing is done with both Kannada and the target language Telugu. An accuracy of 88% for Kannada and 62% for Telugu characters is achieved by using Inception Model which is built using Convolution Neural Networks (CNN) image classifier. The dataset consists of 10700 Kannada characters. The model is also tested for 100 words of Telugu and Kannada with an accuracy of 72% and 82% respectively.
机译:本文介绍了一个跨语言平台,用于识别低资源脚本的字符和单词,即没有标准数据集的脚本,数据集不可用于公共访问。 Indie脚本来自共同原点,其中一些脚本具有共同的3个区域结构。识别此类脚本可以在具有类似结构的其他脚本的帮助下完成。要识别这些角色,模型是用源语言kannada培训,带有区域 - 明智的培训和测试是与kannada和目标语言泰卢固定进行的。通过使用卷积神经网络(CNN)图像分类器建立的Inception模型,实现了kannada的88%和62%的遥控特性。 DataSet由10700个Kannada字符组成。该模型还测试了100字的Telugu和Kannada的精度分别为72%和82%。

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