Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

SparSamp: Efficient Provably Secure Steganography Based on Sparse Sampling

About

Steganography embeds confidential data within seemingly innocuous communications. Provable security in steganography, a long-sought goal, has become feasible with deep generative models. However, existing methods face a critical trade-off between security and efficiency. This paper introduces SparSamp, an efficient provably secure steganography method based on sparse sampling. SparSamp embeds messages by combining them with pseudo-random numbers to obtain message-derived random numbers for sampling. It enhances extraction accuracy and embedding capacity by increasing the sampling intervals and making the sampling process sparse. SparSamp preserves the original probability distribution of the generative model, thus ensuring security. It introduces only $O(1)$ additional complexity per sampling step, enabling the fastest embedding speed without compromising generation speed. SparSamp is designed to be plug-and-play; message embedding can be achieved by simply replacing the sampling component of an existing generative model with SparSamp. We implemented SparSamp in text, image, and audio generation models. It can achieve embedding speeds of up to 755 bits/second with GPT-2, 5046 bits/second with DDPM, and 9,223 bits/second with WaveRNN.

Yaofei Wang, Gang Pei, Kejiang Chen, Jinyang Ding, Chao Pan, Weilong Pang, Donghui Hu, Weiming Zhang• 2025

Related benchmarks

TaskDatasetResultRank
SteganographyXHS
Entropy (bit/token)3.6482
21
Generative SteganographyWild
Entropy (bit/token)2.0895
21
Steganographic message extractionToken Ambiguity (TA)
Success Rate96
6
Showing 3 of 3 rows

Other info

Follow for update