CVLGMMJun 25, 2025

InvZW: Invariant Feature Learning via Noise-Adversarial Training for Robust Image Zero-Watermarking

arXiv:2506.20370v12 citationsh-index: 4
Originality Incremental advance
AI Analysis

This addresses the problem of protecting image copyrights without altering the original content, offering a robust solution for digital watermarking applications, though it appears incremental by building on existing deep learning and adversarial techniques.

The paper tackles robust image zero-watermarking by developing a deep learning framework that learns distortion-invariant features through noise-adversarial training, achieving state-of-the-art robustness in feature stability and watermark recovery across diverse datasets and distortions.

This paper introduces a novel deep learning framework for robust image zero-watermarking based on distortion-invariant feature learning. As a zero-watermarking scheme, our method leaves the original image unaltered and learns a reference signature through optimization in the feature space. The proposed framework consists of two key modules. In the first module, a feature extractor is trained via noise-adversarial learning to generate representations that are both invariant to distortions and semantically expressive. This is achieved by combining adversarial supervision against a distortion discriminator and a reconstruction constraint to retain image content. In the second module, we design a learning-based multibit zero-watermarking scheme where the trained invariant features are projected onto a set of trainable reference codes optimized to match a target binary message. Extensive experiments on diverse image datasets and a wide range of distortions show that our method achieves state-of-the-art robustness in both feature stability and watermark recovery. Comparative evaluations against existing self-supervised and deep watermarking techniques further highlight the superiority of our framework in generalization and robustness.

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