Topic-aware Neural Linguistic Steganography Based on Knowledge Graphs

Yamin Li, Jun Zhang, Zhongliang Yang, Ru Zhang
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引用次数: 11

Abstract

The core challenge of steganography is always how to improve the hidden capacity and the concealment. Most current generation-based linguistic steganography methods only consider the probability distribution between text characters, and the emotion and topic of the generated steganographic text are uncontrollable. Especially for long texts, generating several sentences related to a topic and displaying overall coherence and discourse-relatedness can ensure better concealment. In this article, we address the problem of generating coherent multi-sentence texts for better concealment, and a topic-aware neural linguistic steganography method that can generate a steganographic paragraph with a specific topic is present. We achieve a topic-controllable steganographic long text generation by encoding the related entities and their relationships from Knowledge Graphs. Experimental results illustrate that the proposed method can guarantee both the quality of the generated steganographic text and its relevance to a specific topic. The proposed model can be widely used in covert communication, privacy protection, and many other areas of information security.
基于知识图的主题感知神经语言隐写
如何提高隐写能力和隐蔽性一直是隐写技术面临的核心挑战。目前大多数基于生成的语言隐写方法只考虑文本字符之间的概率分布,生成的隐写文本的情感和主题是不可控的。特别是对于长文本,生成几个与主题相关的句子,并表现出整体的连贯性和话语相关性,可以确保更好的隐蔽性。在本文中,我们解决了生成连贯的多句子文本以更好地隐藏的问题,并提出了一种主题感知神经语言隐写方法,该方法可以生成具有特定主题的隐写段落。通过对知识图中的相关实体及其关系进行编码,实现了主题可控的隐写长文本生成。实验结果表明,该方法既能保证生成的隐写文本的质量,又能保证其与特定主题的相关性。该模型可广泛应用于隐蔽通信、隐私保护和许多其他信息安全领域。
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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