English

END$^2$: Robust Dual-Decoder Watermarking Framework Against Non-Differentiable Distortions

Computer Vision and Pattern Recognition 2024-12-16 v1 Image and Video Processing

Abstract

DNN-based watermarking methods have rapidly advanced, with the ``Encoder-Noise Layer-Decoder'' (END) framework being the most widely used. To ensure end-to-end training, the noise layer in the framework must be differentiable. However, real-world distortions are often non-differentiable, leading to challenges in end-to-end training. Existing solutions only treat the distortion perturbation as additive noise, which does not fully integrate the effect of distortion in training. To better incorporate non-differentiable distortions into training, we propose a novel dual-decoder architecture (END2^2). Unlike conventional END architecture, our method employs two structurally identical decoders: the Teacher Decoder, processing pure watermarked images, and the Student Decoder, handling distortion-perturbed images. The gradient is backpropagated only through the Teacher Decoder branch to optimize the encoder thus bypassing the problem of non-differentiability. To ensure resistance to arbitrary distortions, we enforce alignment of the two decoders' feature representations by maximizing the cosine similarity between their intermediate vectors on a hypersphere. Extensive experiments demonstrate that our scheme outperforms state-of-the-art algorithms under various non-differentiable distortions. Moreover, even without the differentiability constraint, our method surpasses baselines with a differentiable noise layer. Our approach is effective and easily implementable across all END architectures, enhancing practicality and generalizability.

Keywords

Cite

@article{arxiv.2412.09960,
  title  = {END$^2$: Robust Dual-Decoder Watermarking Framework Against Non-Differentiable Distortions},
  author = {Nan Sun and Han Fang and Yuxing Lu and Chengxin Zhao and Hefei Ling},
  journal= {arXiv preprint arXiv:2412.09960},
  year   = {2024}
}

Comments

9 pages, 3 figures

R2 v1 2026-06-28T20:33:36.773Z