We propose a method to quantify uncertainty in radiance fields using a novel and efficient manifold sampling strategy. Our approach allows for differentiable optimization of views to reduce reconstruction ambiguities. We demonstrate this capability in next-best view planning (left) and illumination planning (right) tasks.
Radiance fields are powerful and, hence, popular models for representing the appearance of complex scenes. Yet, constructing them based on image observations gives rise to ambiguities and uncertainties. We propose a versatile approach for learning Gaussian radiance fields with explicit and fine-grained uncertainty estimates that impose only little additional cost compared to uncertainty-agnostic training. Our key observation is that uncertainties can be modeled as a low-dimensional manifold in the space of radiance field parameters that is highly amenable to Monte Carlo sampling. Importantly, our uncertainties are differentiable and, thus, allow for gradient-based optimization of subsequent captures that optimally reduce ambiguities. We demonstrate state-of-the-art performance on next-best-view planning tasks, including high-dimensional illumination planning for optimal radiance field relighting quality.
@InProceedings{lyu2024manifold, title={Manifold Sampling for Differentiable Uncertainty in Radiance Fields}, author={Lyu, Linjie and Tewari, Ayush and Habermann, Marc and Saito, Shunsuke and Zollh{\"o}fer, Michael and Leimk{\"u}ehler, Thomas and Theobalt, Christian}, booktitle = {SIGGRAPH Asia Conference Proceedings}, year = {2024}, doi = {10.1145/3680528.3687655}, }