核心概念
Leveraging uncertainty in depth priors through Earth Mover's Distance improves NeRF training.
摘要
The content discusses the challenges of using photometric loss alone in Neural Radiance Fields (NeRF) training and proposes a novel approach to incorporating depth supervision. The authors introduce a method that utilizes off-the-shelf pre-trained diffusion models to predict depth and capture uncertainty during the denoising process. By supervising the ray termination distance distribution with Earth Mover's Distance, they outperform baselines on standard depth metrics while maintaining performance on photometric measures. The article includes an introduction, related work, method overview, experimental setup, results, conclusions, limitations, and future work.
Structure:
- Introduction to NeRFs and challenges.
- Previous work on depth supervision in NeRFs.
- Proposed method using Earth Mover's Distance for supervision.
- Experimental setup and evaluation on ScanNet scenes.
- Results showing improved geometric understanding with maintained photometric quality.
- Conclusions and future directions.
統計資料
"Our method reduces all depth metrics of all baselines by at least 11%."
"Our model reduces the error of DäRF by up to 54% on relative error metric."
"Our method outperforms DDPrior which has in-domain pretrained depth maps."
引述
"Depth priors should be a suggestion."
"We propose a new way to think about uncertainty in depth supervised NeRF."