Shape and Morphological Transformation Based Features for Language Identification in Indian Document Images

M. Hangarge, B. V. Dhandra
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引用次数: 8

Abstract

In this paper, a technique of language identification in document images is described to discriminate five major Indian languages: Hindi, Marathi, Sanskrit, Assamese and Bengali belong to Devnagari and Bangla scripts. A text block of each language containing at least two text lines is selected and characterized by employing global and local features. Morphological transformations are used to decompose a text block in two directions at three levels, to capture fine texture primitives. Shape features of connected components are used to retain the local properties of the text block. Further, combination of these features is used to classify 500 text blocks of proposed languages based on Binary decision tree and KNN classifier. Proposed method is quite different from reported method on non-Indian languages, which are based on shape coding of characters, words and document vectorization. This method directly captures word shapes without segmentation and it is tolerant to variations in font style and size. The language identification results are encouraging.
基于形状和形态变换特征的印度文档图像语言识别
在本文中,描述了一种语言识别技术在文件图像区分五种主要的印度语言:印地语,马拉地语,梵语,阿萨姆语和孟加拉语属于Devnagari和孟加拉脚本。选择包含至少两条文本行的每种语言的文本块,并通过采用全局和局部特征来表征。形态学变换用于在三个层次上对文本块进行两个方向的分解,以获取精细的纹理基元。连接组件的形状特征用于保留文本块的局部属性。然后,结合这些特征,基于二叉决策树和KNN分类器对500个文本块进行分类。本文提出的方法与文献报道的基于字符、单词形状编码和文档矢量化的非印度语言方法有很大的不同。该方法直接捕获单词形状而不进行分割,并且可以容忍字体样式和大小的变化。语言识别的结果令人鼓舞。
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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