MERF: Memory-Efficient Radiance Fields for Real-time View Synthesis in Unbounded Scenes

Author:

Reiser Christian12ORCID,Szeliski Rick3ORCID,Verbin Dor4ORCID,Srinivasan Pratul5ORCID,Mildenhall Ben5ORCID,Geiger Andreas26ORCID,Barron Jon5ORCID,Hedman Peter1ORCID

Affiliation:

1. Google Research, London, United Kingdom

2. University of Tübingen, Tübingen, Germany

3. Google Research, Seattle, United States of America

4. Google Research, Boston, United States of America

5. Google Research, San Francisco, United States of America

6. Tübingen AI Center, Tübingen, Germany

Abstract

Neural radiance fields enable state-of-the-art photorealistic view synthesis. However, existing radiance field representations are either too compute-intensive for real-time rendering or require too much memory to scale to large scenes. We present a Memory-Efficient Radiance Field (MERF) representation that achieves real-time rendering of large-scale scenes in a browser. MERF reduces the memory consumption of prior sparse volumetric radiance fields using a combination of a sparse feature grid and high-resolution 2D feature planes. To support large-scale unbounded scenes, we introduce a novel contraction function that maps scene coordinates into a bounded volume while still allowing for efficient ray-box intersection. We design a lossless procedure for baking the parameterization used during training into a model that achieves real-time rendering while still preserving the photorealistic view synthesis quality of a volumetric radiance field.

Funder

ERC Starting Grant LEGO3D

DFG EXC number

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Graphics and Computer-Aided Design

Reference67 articles.

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3. Benjamin Attal, Selena Ling, Aaron Gokaslan, Christian Richardt, and James Tompkin. 2020. MatryODShka: Real-time 6DoF Video View Synthesis using Multi-Sphere Images. ECCV (2020).

4. Jonathan T. Barron, Ben Mildenhall, Dor Verbin, Pratul P. Srinivasan, and Peter Hedman. 2022. Mip-NeRF 360: Unbounded Anti-Aliased Neural Radiance Fields. CVPR (2022).

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