Gespeichert in:
Bibliographische Detailangaben
Hauptverfasser: Zhang, Tianshuo, Jia, Gao, Zhai, Wenzhe, Yann, Rui, Xing, Xianglei
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2505.10950
Tags: Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
_version_ 1866916739669819392
author Zhang, Tianshuo
Jia, Gao
Zhai, Wenzhe
Yann, Rui
Xing, Xianglei
author_facet Zhang, Tianshuo
Jia, Gao
Zhai, Wenzhe
Yann, Rui
Xing, Xianglei
contents Data steganography aims to conceal information within visual content, yet existing spatial- and frequency-domain approaches suffer from trade-offs between security, capacity, and perceptual quality. Recent advances in generative models, particularly diffusion models, offer new avenues for adaptive image synthesis, but integrating precise information embedding into the generative process remains challenging. We introduce Shackled Dancing Diffusion, or SD$^2$, a plug-and-play generative steganography method that combines bit-position locking with diffusion sampling injection to enable controllable information embedding within the generative trajectory. SD$^2$ leverages the expressive power of diffusion models to synthesize diverse carrier images while maintaining full message recovery with $100\%$ accuracy. Our method achieves a favorable balance between randomness and constraint, enhancing robustness against steganalysis without compromising image fidelity. Extensive experiments show that SD$^2$ substantially outperforms prior methods in security, embedding capacity, and stability. This algorithm offers new insights into controllable generation and opens promising directions for secure visual communication.
format Preprint
id arxiv_https___arxiv_org_abs_2505_10950
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Shackled Dancing: A Bit-Locked Diffusion Algorithm for Lossless and Controllable Image Steganography
Zhang, Tianshuo
Jia, Gao
Zhai, Wenzhe
Yann, Rui
Xing, Xianglei
Machine Learning
Data steganography aims to conceal information within visual content, yet existing spatial- and frequency-domain approaches suffer from trade-offs between security, capacity, and perceptual quality. Recent advances in generative models, particularly diffusion models, offer new avenues for adaptive image synthesis, but integrating precise information embedding into the generative process remains challenging. We introduce Shackled Dancing Diffusion, or SD$^2$, a plug-and-play generative steganography method that combines bit-position locking with diffusion sampling injection to enable controllable information embedding within the generative trajectory. SD$^2$ leverages the expressive power of diffusion models to synthesize diverse carrier images while maintaining full message recovery with $100\%$ accuracy. Our method achieves a favorable balance between randomness and constraint, enhancing robustness against steganalysis without compromising image fidelity. Extensive experiments show that SD$^2$ substantially outperforms prior methods in security, embedding capacity, and stability. This algorithm offers new insights into controllable generation and opens promising directions for secure visual communication.
title Shackled Dancing: A Bit-Locked Diffusion Algorithm for Lossless and Controllable Image Steganography
topic Machine Learning
url https://arxiv.org/abs/2505.10950