手写自动分类:古希腊铭文的应用

C. Papaodysseus, P. Rousopoulos, Dimitris Arabadjis, Fivi Panopoulou, M. Panagopoulos
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引用次数: 6

摘要

本文提出了一种自动识别写作者的新方法。这种方法被应用于识别古希腊铭文的作者,反过来又可以提供精确和客观的铭文内容的年代。这样的年代对于正确书写历史至关重要。该方法是基于在每个铭文中创建每个字母符号的理想代表的想法,通过适当地拟合该铭文中特定符号的所有实现。然后,定义和提取每个字母符号理想代表的几何特征,计算这些特征的均值和方差,进行相应的统计处理。作者识别的决定是通过对铭文的理想代表进行配对的、基于特征的比较来做出的。每个比较都是通过多个统计检验和引入的最大似然方法来实现的。该系统应用于33个古典时代的雅典铭文,正确地归属于8个不同的手,成功率为100%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Handwriting automatic classification: Application to ancient Greek inscriptions
In this paper a new approach is presented for automatic writer identification. The approach is applied to the identification of the writer of ancient Greek inscriptions that in turn may offer precise and objective dating of the inscriptions content. Such a dating is crucial for the correct history writing. The methodology is based on the idea of creating an ideal representative of each alphabet symbol in each inscription, via proper fitting of all realizations of the specific symbol in this inscription. Next, geometric features for the ideal representative for each alphabet symbol are defined and extracted and corresponding statistical processing follows based on the computation of the mean value and variance of these characteristics. The decision for writer identification is made via pair-wise, feature based comparisons of the ideal representatives of the inscriptions. Each comparison is implemented by means of multiple statistical tests and an introduced maximum likelihood approach. The system was applied to 33 Athenian inscriptions of classical era which were correctly attributed to 8 different hands, namely with 100% success rate.
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CiteScore
3.90
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