The NeRF Signature: Codebook-Aided Watermarking for Neural Radiance Fields

Ziyuan Luo;Anderson Rocha;Boxin Shi;Qing Guo;Haoliang Li;Renjie Wan
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引用次数: 0

Abstract

Neural Radiance Fields (NeRF) have been gaining attention as a significant form of 3D content representation. With the proliferation of NeRF-based creations, the need for copyright protection has emerged as a critical issue. Although some approaches have been proposed to embed digital watermarks into NeRF, they often neglect essential model-level considerations and incur substantial time overheads, resulting in reduced imperceptibility and robustness, along with user inconvenience. In this paper, we extend the previous criteria for image watermarking to the model level and propose NeRF Signature, a novel watermarking method for NeRF. We employ a Codebook-aided Signature Embedding (CSE) that does not alter the model structure, thereby maintaining imperceptibility and enhancing robustness at the model level. Furthermore, after optimization, any desired signatures can be embedded through the CSE, and no fine-tuning is required when NeRF owners want to use new binary signatures. Then, we introduce a joint pose-patch encryption watermarking strategy to hide signatures into patches rendered from a specific viewpoint for higher robustness. In addition, we explore a Complexity-Aware Key Selection (CAKS) scheme to embed signatures in high visual complexity patches to enhance imperceptibility. The experimental results demonstrate that our method outperforms other baseline methods in terms of imperceptibility and robustness.
NeRF签名:用于神经辐射场的码本辅助水印
神经辐射场(Neural Radiance Fields, NeRF)作为一种重要的3D内容表示形式已经引起了人们的关注。随着基于nerf的创作的激增,版权保护的需求已经成为一个关键问题。虽然已经提出了一些将数字水印嵌入NeRF的方法,但它们往往忽略了基本的模型级考虑因素,并且会产生大量的时间开销,导致不可感知性和鲁棒性降低,同时给用户带来不便。本文将以往的图像水印准则扩展到模型层面,提出了一种新的NeRF水印方法——NeRF签名。我们采用代码本辅助签名嵌入(CSE),它不会改变模型结构,从而保持不可感知性并增强模型级别的鲁棒性。此外,经过优化后,任何所需的签名都可以通过CSE嵌入,当NeRF所有者想要使用新的二进制签名时,不需要进行微调。然后,我们引入了一种联合姿态-补丁加密水印策略,将签名隐藏到从特定视点呈现的补丁中,以提高鲁棒性。此外,我们探索了一种复杂性感知密钥选择(CAKS)方案,将签名嵌入到高视觉复杂性补丁中,以增强不可感知性。实验结果表明,该方法在不可感知性和鲁棒性方面优于其他基线方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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