Meta-FC: Meta-Learning with Feature Consistency for Robust and Generalizable Watermarking
Yuheng Li, Weitong Chen, Chengcheng Zhu, Jiale Zhang, Chunpeng Ge, Di Wu, Guodong Long

TL;DR
This paper introduces Meta-FC, a meta-learning approach with feature consistency for watermarking that improves robustness and generalization against diverse distortions by encouraging stable, distortion-invariant features.
Contribution
The paper proposes a novel meta-learning training strategy with feature consistency loss to enhance watermarking robustness and generalization across various distortions.
Findings
Meta-FC outperforms SRD strategy in robustness and generalization.
Improves robustness by 1.59% under high-intensity distortions.
Enhances generalization to unknown distortions by 2.38%.
Abstract
Deep learning-based watermarking has made remarkable progress in recent years. To achieve robustness against various distortions, current methods commonly adopt a training strategy where a \underline{\textbf{s}}ingle \underline{\textbf{r}}andom \underline{\textbf{d}}istortion (SRD) is chosen as the noise layer in each training batch. However, the SRD strategy treats distortions independently within each batch, neglecting the inherent relationships among different types of distortions and causing optimization conflicts across batches. As a result, the robustness and generalizability of the watermarking model are limited. To address this issue, we propose a novel training strategy that enhances robustness and generalization via \underline{\textbf{meta}}-learning with \underline{\textbf{f}}eature \underline{\textbf{c}}onsistency (Meta-FC). Specifically, we randomly sample multiple…
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Taxonomy
TopicsAdvanced Steganography and Watermarking Techniques · Adversarial Robustness in Machine Learning · Generative Adversarial Networks and Image Synthesis
