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Improved Recognition Results of Medieval Handwritten Gurmukhi Manuscripts Using Boosting and Bagging Methodologies

机译:利用升压和装袋方法改进了中世纪手写Gurmukhi手稿的识别结果

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Recognition of medieval handwritten Gurmukhi manuscripts is an essential process for resourceful contents exploitation of the priceless information contained in them. There are numerous Gurmukhi script ancient manuscripts from fifteenth to twentieth century's. In this paper, we have considered, work written by various persons from 18th to 20th centuries. For recognition, we have used various feature extraction techniques like zoning, discrete cosine transformations, and gradient features and different combinations of these features. For classification, four classifiers, namely, k-NN, SVM, Decision Tree, Random Forest individual and combinations of these four classifiers with voting scheme have been considered. Adaptive boosting and bagging have been explored for improving the recognition results and achieves the new state of the art for recognition of medieval handwritten Gurmukhi manuscripts recognition. Using this proposed framework, maximum recognition accuracy of 95.91% has been achieved using adaptive boosting technique and a combination of four different classifiers considered in this paper. To the best of our knowledge, this work is the successful attempt towards recognition of medieval handwritten Gurmukhi manuscripts and it can lead towards the development of optical character recognition systems for recognizing medieval handwritten documents in other Indic and non-Indic scripts as well.
机译:认识中世纪手写的Gurmukhi手稿是有足够的内容利用它们中所包含的无价信息的基本进程。从十五世纪到二十世纪,有许多Gurmukhi古怪的麦克风。在本文中,我们已经考虑过,从18世纪到20世纪的各个人撰写的工作。为了识别,我们使用了各种特征提取技术,如分区,离散余弦变换和梯度特征以及这些特征的不同组合。对于分类,已经考虑了四个分类器,即K-NN,SVM,决策树,随机森林个体和这四个分类器的随机森林个体以及具有投票方案的组合。已经探讨了适应性提升和袋装,以改善识别结果,实现新的艺术状态,以识别中世纪手写的Gurmukhi手稿识别。使用该提出的框架,使用自适应升压技术和本文考虑的四种不同分类器的组合实现了95.91%的最大识别精度。据我们所知,这项工作是成功地对中世纪手写的Gurmukhi手稿的成功尝试,它可以导致光学字符识别系统的开发,用于识别其他指示和非指示脚本中的中世纪手写文档。

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