Vincent Malleron, V. Eglin, H. Emptoz, Stéphanie Dord-Crouslé, Philippe Régnier
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引用次数: 22
摘要
本文提出了一种改进人文科学语料库电子版本的新方法,提供了一种有效的手稿页面结构估计方法。在任何手写文档的分析过程中,文本线分割是一个重要的阶段。在无约束的19世纪古代手写文档中,存在可变的行间距、不恒定的基线倾斜、重叠和遮挡,使文本行分割任务复杂化。在本文中,我们只使用文本行倾斜可以是随机和不规则的事实作为脚本的先验知识。在这种情况下,我们将文本行检测建模为图像分割问题,通过使用霍夫变换和连接组件的聚类来增强文本行结构,从而使文本行边界出现。本文提出的页面布局分析的片段分解方法首先对五种视觉和遗传分类法中的内容页面进行分类,然后对文本行进行提取和片段分解。实验表明,该方法对福楼拜数字化手稿(“Dossiers documentaires de Bouvard et p cuchet”,1872-1880)中规则和半规则手写页面的文本行检测具有较高的准确率。
Text Lines and Snippets Extraction for 19th Century Handwriting Documents Layout Analysis
In this paper we propose a new approach to improve electronic editions of human science corpus, providing an efficient estimation of manuscripts pages structure. In any handwriting documents analysis process, the text line segmentation is an important stage. The presence of variable inter-line spaces, of inconstant base-line skews, overlapping and occlusions in unconstrained ancient 19th handwritten documents complexifies the text lines segmentation task. In this paper, we only use as prior knowledge of script the fact that text lines skews can be random and irregular.In that context, we model text line detection as an image segmentation problem by enhancing text line structure using Hough transform and a clustering of connected components so as to make text line boundaries appear. The proposed approach of snippets decomposition for page layout analysislies on a first step of content pages classification in five visual and genetic taxonomies, and a second step of text line extraction and snippets decomposition. Experiments show that the proposed method achieves high accuracy for detecting text lines in regular and semi-regular handwritten pages in the corpus of digitized Flaubert manuscripts (”Dossiers documentaires de Bouvard et Pécuchet”, 1872-1880).