Recognition of Historical Handwritten Kannada Characters Using Local Binary Pattern Features

G. Thippeswamy, H. Chandrakala
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引用次数: 3

Abstract

Archaeological departments throughout the world have undertaken massive digitization projects to digitize their historical document corpus. In order to provide worldwide visibility to these historical documents residing in the digital libraries, a character recognition system is an inevitable tool. Automatic character recognition is a challenging problem as it needs a cautious blend of enhancement, segmentation, feature extraction, and classification techniques. This work presents a novel holistic character recognition system for the digitized Estampages of Historical Handwritten Kannada Stone Inscriptions (EHHKSI) belonging to 11th century. First, the EHHKSI images are enhanced using Retinex and Morphological operations to remove the degradations. Second, the images are segmented into characters by connected component labeling. Third, LBP features are extracted from these characters. Finally, decision tree is used to learn these features and classify the characters into appropriate classes. The LBP features improved the performance of the system significantly.
基于局部二值模式特征的历史手写体卡纳达字识别
世界各地的考古部门都进行了大量的数字化项目,将他们的历史文献语料库数字化。为了使这些保存在数字图书馆中的历史文献在世界范围内可见,字符识别系统是一种不可避免的工具。自动字符识别是一个具有挑战性的问题,因为它需要谨慎地混合增强、分割、特征提取和分类技术。本文提出了一种全新的11世纪古卡纳达文手写体石刻数字化刻本的整体汉字识别系统。首先,使用Retinex和形态学操作增强EHHKSI图像以去除退化。其次,通过连通分量标记将图像分割成字符;第三,提取LBP特征。最后,使用决策树来学习这些特征,并将字符分类到适当的类别中。LBP特性显著提高了系统的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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