Breaking the Resolution Barrier: Arbitrary-resolution Deep Image Steganography Framework
Xinjue Hu, Chi Wang, Boyu Wang, Xiang Zhang, Zhenshan Tan, Zhangjie Fu

TL;DR
ARDIS introduces a novel deep image steganography framework that enables arbitrary-resolution secret image hiding and recovery, overcoming traditional resolution constraints and minimizing detail loss.
Contribution
It pioneers a continuous signal reconstruction paradigm with a frequency decoupling architecture and implicit resolution coding for blind, high-fidelity, cross-resolution secret image recovery.
Findings
Outperforms state-of-the-art in invisibility and fidelity
Enables secret images to be recovered at original resolutions
Effectively handles resolution mismatch without resampling
Abstract
Deep image steganography (DIS) has achieved significant results in capacity and invisibility. However, current paradigms enforce the secret image to maintain the same resolution as the cover image during hiding and revealing. This leads to two challenges: secret images with inconsistent resolutions must undergo resampling beforehand which results in detail loss during recovery, and the secret image cannot be recovered to its original resolution when the resolution value is unknown. To address these, we propose ARDIS, the first Arbitrary Resolution DIS framework, which shifts the paradigm from discrete mapping to reference-guided continuous signal reconstruction. Specifically, to minimize the detail loss caused by resolution mismatch, we first design a Frequency Decoupling Architecture in hiding stage. It disentangles the secret into a resolution-aligned global basis and a…
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