Fake3DGS:神经渲染中三维操控检测的基准测试 / Fake3DGS: A Benchmark for 3D Manipulation Detection in Neural Rendering
1️⃣ 一句话总结
本文提出了一种用于检测三维场景伪造的基准数据集Fake3DGS,证明现有二维检测器难以识别由三维高斯泼溅技术生成的逼真假图,并开发了一种利用多视角一致性的三维感知检测方法,显著提升了对篡改三维内容的识别能力。
Recent advances in 3D reconstruction and neural rendering,particularly 3D Gaussian Splatting, make it feasible and simple to edit 3D scenes and re-render them as highly realistic images. Therefore, security concerns arise regarding the authenticity of 3D content. Despite this threat, 3D fake detection remains largely unexplored in the literature, and most existing work is limited to 2D space. Therefore, in this paper, we formalize the concept of 3D fake detection and introduce Fake3DGS, a dataset of 3D Gaussian splatting scenes and corresponding rendered views, where fake images are produced by controlled manipulations of geometry, appearance, and spatial layout, while preserving high visual realism. Using this benchmark, we demonstrate that current state-of-the-art 2D detectors struggle to distinguish between original and 3D manipulated images. To bridge this gap, we introduce a 3D-aware detection method that leverages multi-view coherence and features derived from the Gaussian splatting representation. Experimental results demonstrate a substantial improvement in recognizing modified 3D content, underscoring the validity of the new dataset and the necessity for authenticity assessment techniques that extend beyond 2D evidence. Code and data are publicly released for future investigations.
Fake3DGS:神经渲染中三维操控检测的基准测试 / Fake3DGS: A Benchmark for 3D Manipulation Detection in Neural Rendering
本文提出了一种用于检测三维场景伪造的基准数据集Fake3DGS,证明现有二维检测器难以识别由三维高斯泼溅技术生成的逼真假图,并开发了一种利用多视角一致性的三维感知检测方法,显著提升了对篡改三维内容的识别能力。
源自 arXiv: 2604.27590