Litcius/Paper detail

Linguistic Generative Steganography With Enhanced Cognitive-Imperceptibility

Zhongliang Yang, Lingyun Xiang, Siyu Zhang, Xingming Sun, Yongfeng Huang

2021IEEE Signal Processing Letters38 citationsDOI

Abstract

In recent years, linguistic generative steganography has been greatly developed. The previous works are mainly to optimize the perceptual-imperceptibility and statistical-imperceptibility of the generated steganographic text, and the latest developments show that they have been able to generate steganographic texts that look authentic enough. However, we noticed that these works generally cannot control the semantic expression of the generated steganographic text, and we believe this will bring potential security risks. We named this kind of security challenges as cognitive-imperceptibility. We think this is a new challenge that the generative steganography models must strive to overcome in the future. In this letter, we conduct some preliminary attempts to solve this challenge. Experimental results show that the proposed methods can further constrain the semantic expression of the generated steganographic text on the basis of ensuring certain perceptual-imperceptibility and statistical-imperceptibility, so as to enhance its cognitive-imperceptibility.

Topics & Concepts

SteganographyComputer scienceExpression (computer science)CognitionGenerative grammarArtificial intelligencePerceptionGenerative modelImage (mathematics)PsychologyProgramming languageNeuroscienceAdvanced Steganography and Watermarking TechniquesDigital Media Forensic DetectionMusic and Audio Processing