一种用于编码手稿转录的通用无监督方法

Arnau Baró, Jialuo Chen, A. Fornés, Beáta Megyesi
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引用次数: 13

摘要

历史密码是一种特殊类型的手稿,包含加密信息,对解释我们的历史很重要。破译的第一步是转录图像,无论是手动还是自动图像处理技术。尽管由于深度学习方法,手写文本识别(HTR)得到了改进,但对标记数据的训练需求是一个重要的限制。由于密码通常使用跨各种字母和唯一符号的符号集,而没有任何可用的转录方案,因此这些有监督的HTR技术不适合转录密码。本文提出了一种基于聚类和标签传播的无监督抄写加密手稿的方法,该方法已成功应用于网络中的社区检测。我们分析了不同符号集的密码的性能,并讨论了与有监督的HTR方法相比的优点和缺点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards a Generic Unsupervised Method for Transcription of Encoded Manuscripts
Historical ciphers, a special type of manuscripts, contain encrypted information, important for the interpretation of our history. The first step towards decipherment is to transcribe the images, either manually or by automatic image processing techniques. Despite the improvements in handwritten text recognition (HTR) thanks to deep learning methodologies, the need of labelled data to train is an important limitation. Given that ciphers often use symbol sets across various alphabets and unique symbols without any transcription scheme available, these supervised HTR techniques are not suitable to transcribe ciphers. In this paper we propose an un-supervised method for transcribing encrypted manuscripts based on clustering and label propagation, which has been successfully applied to community detection in networks. We analyze the performance on ciphers with various symbol sets, and discuss the advantages and drawbacks compared to supervised HTR methods.
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