Automated Transcription of Historical Encrypted Manuscripts

Q4 Mathematics
Eugen Antal, Pavol Marák
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引用次数: 2

Abstract

Abstract This paper deals with historical encrypted manuscripts and introduces an automated method for the detection and transcription of ciphertext symbols for subsequent cryptanalysis. Our database contains documents used in the past by aristocratic families living in the territory of Slovakia. They are encrypted using a nomenclator which is a specific type of substitution cipher. In our case, the nomenclator uses digits as ciphertext symbols. We have proposed a method for the detection, classification, and transcription of handwritten digits from the original documents. Our method is based on Mask R-CNN which is a deep convolutional neural network for instance segmentation. Mask R-CNN was trained on a manually collected database of digit annotations. We employ a specific strategy where the input image is first divided into small blocks. The image blocks are then passed to Mask R-CNN to obtain detections. This way we avoid problems related to the detection of a large number of small dense objects in a high-resolution image. Experiments have shown promising detection performance for all digit types with minimum false detections.
历史加密手稿的自动转录
本文研究了历史上的加密手稿,并介绍了一种自动检测和转录密文符号的方法,用于后续的密码分析。我们的数据库包含过去居住在斯洛伐克境内的贵族家庭使用的文件。它们使用命名器加密,命名器是一种特定类型的替换密码。在本例中,命名器使用数字作为密文符号。我们提出了一种从原始文档中检测、分类和转录手写数字的方法。我们的方法是基于Mask R-CNN,这是一种用于实例分割的深度卷积神经网络。Mask R-CNN在人工收集的数字注释数据库上进行训练。我们采用了一种特殊的策略,首先将输入图像分成小块。然后将图像块传递给Mask R-CNN以获得检测。这样我们就避免了在高分辨率图像中检测大量小而密集物体的问题。实验表明,该方法对所有数字类型的检测都具有良好的性能,并且检测错误最少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Tatra Mountains Mathematical Publications
Tatra Mountains Mathematical Publications Mathematics-Mathematics (all)
CiteScore
1.00
自引率
0.00%
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