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Provably Secure Generative Linguistic Steganography

Siyu Zhang, Zhongliang Yang, Jinshuai Yang, Yongfeng Huang

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Abstract

Generative linguistic steganography mainly utilized language models and applied steganographic sampling (stegosampling) to generate high-security steganographic text (stegotext). However, previous methods generally lead to statistical differences between the conditional probability distributions of stegotext and natural text, which brings about security risks. In this paper, to further ensure security, we present a novel provably secure generative linguistic steganographic method ADG, which recursively embeds secret information by Adaptive Dynamic Grouping of tokens according to their probability given by an offthe-shelf language model. We not only prove the security of ADG mathematically, but also conduct extensive experiments on three public corpora to further verify its imperceptibility. The experimental results reveal that the proposed method is able to generate stegotext with nearly perfect security.

Topics & Concepts

SteganographyComputer scienceGenerative grammarSteganalysisArtificial intelligenceGenerative modelNatural language processingTheoretical computer scienceImage (mathematics)Advanced Steganography and Watermarking TechniquesMusic and Audio ProcessingChaos-based Image/Signal Encryption
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