Hiding Security Feature Into Text Content for Securing Documents Using Generated Font

Vinh Loc Cu, J. Burie, J. Ogier, Cheng-Lin Liu
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引用次数: 4

Abstract

Motivated by increasing possibility of the tampering of genuine documents during a transmission over digital channels, we focus on developing a watermarking framework for determining whether a given document is genuine or falsified. The proposed framework is performed by hiding a security feature or secret information within the document. In order to hide the security feature, we replace the appropriate characters of legal document by the equivalent characters coming from generated fonts, called hereafter the variations of characters. These variations are produced by training generative adversarial networks (GAN) with the features of character's skeleton and normal shape. Regarding the process of detecting hidden information, we make use of fully convolutional networks (FCN) to produce salient regions from the watermarked document. The salient regions mark positions of document where the characters are substituted by their variations, and these positions are used as a reference for extracting the hidden information. Lastly, we demonstrate that our approach gives high precision of data detection, and competitive performance compared to state-of-the-art approaches.
将安全功能隐藏到文本内容中以使用生成的字体保护文档
由于在数字渠道传输过程中真实文件被篡改的可能性越来越大,我们专注于开发一种水印框架,以确定给定文件是真实的还是伪造的。建议的框架是通过在文档中隐藏安全特性或秘密信息来执行的。为了隐藏法律文件的防伪特性,我们将法律文件中相应的字符替换为生成字体中相应的字符,以下称为字符变体。这些变化是通过训练具有人物骨架和正常形状特征的生成对抗网络(GAN)产生的。在检测隐藏信息的过程中,我们利用全卷积网络(FCN)从水印文档中产生显著区域。突出区域标记了文档中字符被其变体替换的位置,这些位置作为提取隐藏信息的参考。最后,我们证明了我们的方法提供了高精度的数据检测,与最先进的方法相比,具有竞争力的性能。
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