历史速记文档的解密模型

A. Rogov, Mikhail B. Gippiev, Ivan Shterkel
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引用次数: 1

摘要

本文介绍了用于历史速记文档识别的方法。我们区分以下任务:二值化,聚类,线条识别和符号类型(主,上标,下标)的确定。每种方法都根据召回率、精确度和f测量标准进行评估。对速记文档进行二值化的最佳方法是改进阈值法。我们提出了图形符号聚类的几种方法:片段长度比较法、投影比较法和篮子法。用篮子的方法可以达到最好的效果。提出了线条识别算法和符号分类算法。采用两种方法进行线识别:最近邻法和关系图法。分别采用单逼近法和双逼近法及其修正方法对符号进行分类。用关系图构造方法进行线段分割的效果最好,用改进的双逼近方法确定符号类型的效果最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Models for decryption of historical shorthand documents
This article presents methods that are used for historical shorthand documents recognition. We distinguish following tasks: binarization, clusterization, lines recognition and determination of symbols types (main, superscript, subscript). Each method is evaluated in terms of recall, precision and F-measure criteria. The best method for binarization of shorthand documents appeared to be the modified threshold method. We proposed following methods for graphic symbols clustering: the method of segments lengths comparison, the method of projections comparison and the method of baskets. The best result is achieved with the method of baskets. We also present the algorithms of lines recognition and symbols classification. Lines recognition is performed using two methods: nearest neighbour and relations graph construction. Symbols classification is done by single and by double approximation methods and their modification. The best result of lines segmentation is demonstrated by the method of relations graph construction, and the best result of determination of symbols types is demonstrated by the modified double approximation method.
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