FREmax: A Simple Method Towards Truly Secure Generative Linguistic Steganography

Kaiyi Pang, Minhao Bai,Jinshuai Yang, Huili Wang,Minghu Jiang,Yongfeng Huang

ICASSP 2024 - 2024 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)(2024)

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摘要
Generative Linguistic Steganography (GLS) is applied to protect privacy against excessive censorship by employing Language Models (LMs) to hide privacy messages in texts. To effectively circumvent censorship, GLS generates steganographic texts (stegos) that closely resemble normal human texts (covers) as possible. However, due to the inherent distribution difference between LM-generated text and human covers, existing methods that simply use LMs to generate stegos face challenges in achieving sufficient imperceptibility. To narrow the gap between stegos and covers, this paper proposes a distribution reformation method named ${\mathbf{Frequency}}$ ${\mathbf{REformed}}$ ${\mathbf{Softmax}}$ $\left( {{\mathbf{FREmax}}} \right)$. ${\mathbf{FREmax}}$ generates highly imperceptible stegos aligned with human text by reforming the softmax function in the generation stage of LMs. This reformation is based on the frequency distribution of tokens in the human corpus, ensuring that the distribution of LM-generated stegos closely resembles that of humans. Extensive experimental results show that ${\mathbf{FREmax}}$ improves the linguistic quality and imperceptibility of the generated stegos, providing a valuable remedy to existing GLS methods . 1
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关键词
Linguistic Steganography,Language Model Distribution,Text Generation
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