Skip to yearly menu bar Skip to main content


Poster

RobustNeRF: Ignoring Distractors With Robust Losses

Sara Sabour · Suhani Vora · Daniel Duckworth · Ivan Krasin · David J. Fleet · Andrea Tagliasacchi

West Building Exhibit Halls ABC 002
award Highlight
[ ] [ Project Page ]
[ Paper PDF [ Slides [ Poster

Abstract:

Neural radiance fields (NeRF) excel at synthesizing new views given multi-view, calibrated images of a static scene. When scenes include distractors, which are not persistent during image capture (moving objects, lighting variations, shadows), artifacts appear as view-dependent effects or ‘floaters’. To cope with distractors, we advocate a form of robust estimation for NeRF training, modeling distractors in training data as outliers of an optimization problem. Our method successfully removes outliers from a scene and improves upon our baselines, on synthetic and real-world scenes. Our technique is simple to incorporate in modern NeRF frameworks, with few hyper-parameters. It does not assume a priori knowledge of the types of distractors, and is instead focused on the optimization problem rather than pre-processing or modeling transient objects. More results on our page https://robustnerf.github.io/public.

Chat is not available.