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Word-Level Script Identification from Handwritten Multi-script Documents

机译:手写多脚本文档的单词级脚本标识

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In this paper, a robust word-level handwritten script identification technique has been proposed. A combination of shape based and texture based features are used to identify the script of the handwritten word images written in any of five scripts namely, Bangla, Devnagari, Malayalam, Telugu and Roman. An 87-element feature set is designed to evaluate the present script recognition technique. The technique has been tested on 3000 handwritten words in which each script contributes about 600 words. Based on the identification accuracies of multiple classifiers, Multi Layer Perceptron (MLP) has been chosen as the best classifier for the present work. For 5-fold cross validation and epoch size of 500, MLP classifier produces the best recognition accuracy of 91.79% which is quite impressive considering the shape variations of the said scripts.
机译:本文提出了一种强大的单词手写脚本识别技术。 基于形状和基于纹理的特征的组合用于识别在五个脚本中的任何一个中写的手写词图像的脚本即,Bangla,Devnagari,Malayalam,Telugu和Roman。 一个87元件功能集旨在评估当前的脚本识别技术。 该技术已在3000个手写单词上进行测试,其中每个脚本贡献大约600字。 基于多分类器的识别精度,已选择多层Perceptron(MLP)作为本工作的最佳分级器。 对于5倍的交叉验证和500的epoch尺寸,MLP分类器产生最佳识别准确性为91.79%,考虑到所述脚本的形状变化,这非常令人印象深刻。

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