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Geometry Cloak: Preventing TGS-based 3D Reconstruction from Copyrighted Images

Authors :
Song, Qi
Luo, Ziyuan
Cheung, Ka Chun
See, Simon
Wan, Renjie
Publication Year :
2024

Abstract

Single-view 3D reconstruction methods like Triplane Gaussian Splatting (TGS) have enabled high-quality 3D model generation from just a single image input within seconds. However, this capability raises concerns about potential misuse, where malicious users could exploit TGS to create unauthorized 3D models from copyrighted images. To prevent such infringement, we propose a novel image protection approach that embeds invisible geometry perturbations, termed "geometry cloaks", into images before supplying them to TGS. These carefully crafted perturbations encode a customized message that is revealed when TGS attempts 3D reconstructions of the cloaked image. Unlike conventional adversarial attacks that simply degrade output quality, our method forces TGS to fail the 3D reconstruction in a specific way - by generating an identifiable customized pattern that acts as a watermark. This watermark allows copyright holders to assert ownership over any attempted 3D reconstructions made from their protected images. Extensive experiments have verified the effectiveness of our geometry cloak. Our project is available at https://qsong2001.github.io/geometry_cloak.<br />Comment: Accepted by NeurIPS 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2410.22705
Document Type :
Working Paper