Word stretching for effective segmentation and classification of historical Arabic handwritten documents

Z. Aghbari, Salama Brook
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引用次数: 7

Abstract

Recently, there is a growing need to access historical Arabic handwritten manuscripts (HAH manuscripts) that are stored in large archives; therefore, managing tools for automatic searching, indexing, classifying and retrieval of HAH manuscripts are required. The peculiar characteristics of Arabic handwriting have added an extra challenging dimension in developing such systems. This paper presents a novel holistic technique for segmenting and classifying HAH manuscripts. The classification of HAH manuscripts is performed in several steps. First, the HAH manuscript's image is segmented into words, and then each word is segmented into its connected parts. Due to the existing overlap between the adjacent connected parts of a single word, we developed a stretching algorithm to increase the gap between them and thus improve their segmentation. Second, several structural and statistical features, which are devised for Arabic text, are extracted from these connected parts and then combined to represent a word with one consolidated feature vector. Finally, a neural network is used to learn and classify the input vectors into word classes. The extraction of structural and statistical features from the individual connected parts, as compared to the extraction of these features from the whole word, improved the performance of the system significantly.
用于有效分割和分类历史阿拉伯手写文件的词延伸
最近,越来越需要查阅储存在大型档案馆中的历史阿拉伯手写手稿(HAH手稿);因此,需要能够自动检索、索引、分类和检索HAH手稿的管理工具。阿拉伯笔迹的独特特征给开发这样的系统增加了额外的挑战。本文提出了一种新的ha手稿分割和分类整体技术。HAH手稿的分类分几个步骤进行。首先,将HAH手稿的图像分割成单词,然后将每个单词分割成相互连接的部分。由于单个单词的相邻连接部分之间存在重叠,我们开发了一种拉伸算法来增加它们之间的间隙,从而提高它们的分割。其次,从这些相互连接的部分中提取出针对阿拉伯文本设计的几个结构特征和统计特征,然后用一个统一的特征向量组合成一个单词。最后,利用神经网络对输入向量进行学习和分类。与从整个单词中提取这些特征相比,从单个连接部分中提取结构和统计特征显著提高了系统的性能。
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