Title
Mip-NeRF 360: Unbounded Anti-Aliased Neural Radiance Fields
Abstract
Though neural radiance fields (NeRF) have demon-strated impressive view synthesis results on objects and small bounded regions of space, they struggle on “un-bounded” scenes, where the camera may point in any di-rection and content may exist at any distance. In this set-ting, existing NeRF-like models often produce blurry or low-resolution renderings (due to the unbalanced detail and scale of nearby and distant objects), are slow to train, and may exhibit artifacts due to the inherent ambiguity of the task of reconstructing a large scene from a small set of images. We present an extension of mip-NeRF (a NeRF variant that addresses sampling and aliasing) that uses a non-linear scene parameterization, online distillation, and a novel distortion-based regularizer to overcome the chal-lenges presented by unbounded scenes. Our model, which we dub “mip-NeRF 360” as we target scenes in which the camera rotates 360 degrees around a point, reduces mean-squared error by 57% compared to mip-NeRF, and is able to produce realistic synthesized views and detailed depth maps for highly intricate, unbounded real-world scenes.
Year
DOI
Venue
2022
10.1109/CVPR52688.2022.00539
IEEE Conference on Computer Vision and Pattern Recognition
Keywords
DocType
Volume
3D from multi-view and sensors, Machine learning
Conference
2022
Issue
Citations 
PageRank 
1
0
0.34
References 
Authors
0
5
Name
Order
Citations
PageRank
Jonathan T. Barron188139.55
Ben Mildenhall201.35
Dor Verbin300.68
Srinivasan, P.P.48110.65
peter hedman5816.63