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A Two-Step System Based on Deep Transfer Learning for Writer Identification in Medieval Books

机译:基于深度迁移学习的两步式中世纪书作者识别系统

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In digital paleography, recent technology advancements are used to support paleographers in the study and analysis of ancient documents. One main goal of paleographers is to identify the different scribes (writers) who wrote a given manuscript. Deep learning has recently been applied to many domains. However, in order to overcome its requirement of large amount of labeled data, transfer learning have been used. This approach typically uses previously trained large deep networks as starting points to solve specific classification problems. In this paper, we present a two step deep transfer learning based tool to help paleographers identify the parts of a manuscript that were written by the same writer. The suggested approach has been tested on a set of digital images from a Bible of the Ⅻ century. The achieved results confirmed the effectiveness of the proposed approach.
机译:在数字古地理学中,最新的技术进步被用于支持古地理学家研究和分析古代文献。古画家的一个主要目标是识别撰写给定手稿的不同抄写员(作家)。深度学习最近已应用于许多领域。然而,为了克服其对大量标记数据的需求,已经使用了转移学习。该方法通常使用以前训练的大型深度网络作为解决特定分类问题的起点。在本文中,我们提出了一个基于两步的基于深度转移学习的工具,以帮助古画家识别同一作者撰写的手稿部分。建议的方法已经在Ⅻ世纪圣经的一组数字图像上进行了测试。取得的结果证实了该方法的有效性。

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