Automatic Handwritten Character Segmentation for Paleographical Character Shape Analysis

Théodore Bluche, D. Stutzmann, Christopher Kermorvant
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引用次数: 1

Abstract

Written texts are both physical (signs, shapes and graphical systems) and abstract objects (ideas), whose meanings and social connotations evolve through time. To study this dual nature of texts, palaeographers need to analyse large scale corpora at the finest granularity, such as character shape. This goal can only be reached through an automatic segmentation process. In this paper, we present a method, based on Handwritten Text Recognition, to automatically align images of digitized manuscripts with texts from scholarly editions, at the levels of page, column, line, word, and character. It has been successfully applied to two datasets of medieval manuscripts, which are now almost fully segmented at character level. The quality of the word and character segmentations are evaluated and further palaeographical analysis are presented.
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用于古文字形状分析的自动手写字符分割
书面文本既是物理的(符号、形状和图形系统),也是抽象的对象(思想),其意义和社会内涵随着时间的推移而演变。为了研究文本的这种双重性质,古学家需要在最细的粒度上分析大型语料库,例如字符形状。这一目标只能通过自动分割过程来实现。在本文中,我们提出了一种基于手写文本识别的方法,在页、列、行、词和字符级别上自动将数字化手稿的图像与学术版本的文本对齐。它已成功地应用于中世纪手稿的两个数据集,现在几乎完全分割在字符水平。对字词切分的质量进行了评价,并提出了进一步的古地理分析。
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Handwritten and Machine-Printed Text Discrimination Using a Template Matching Approach General Pattern Run-Length Transform for Writer Identification Automatic Selection of Parameters for Document Image Enhancement Using Image Quality Assessment Large Scale Continuous Dating of Medieval Scribes Using a Combined Image and Language Model Performance of an Off-Line Signature Verification Method Based on Texture Features on a Large Indic-Script Signature Dataset
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