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NeuRAD: Neural Rendering for Autonomous Driving

About

Neural radiance fields (NeRFs) have gained popularity in the autonomous driving (AD) community. Recent methods show NeRFs' potential for closed-loop simulation, enabling testing of AD systems, and as an advanced training data augmentation technique. However, existing methods often require long training times, dense semantic supervision, or lack generalizability. This, in turn, hinders the application of NeRFs for AD at scale. In this paper, we propose NeuRAD, a robust novel view synthesis method tailored to dynamic AD data. Our method features simple network design, extensive sensor modeling for both camera and lidar -- including rolling shutter, beam divergence and ray dropping -- and is applicable to multiple datasets out of the box. We verify its performance on five popular AD datasets, achieving state-of-the-art performance across the board. To encourage further development, we will openly release the NeuRAD source code. See https://github.com/georghess/NeuRAD .

Adam Tonderski, Carl Lindstr\"om, Georg Hess, William Ljungbergh, Lennart Svensson, Christoffer Petersson• 2023

Related benchmarks

TaskDatasetResultRank
Out-of-path View SynthesisCARLA (out-of-path)
PSNR25.1
8
Novel View SynthesisArgoverse2 10 scenes
PSNR26.49
7
Novel View SynthesisPandaSet 10 scenes
PSNR26.05
7
Scene ReconstructionArgoverse2 10 scenes
PSNR26.46
7
Scene ReconstructionPandaSet 10 scenes
PSNR26.54
7
View SynthesisWaymo Dynamic scenes (test)
PSNR29.02
7
View SynthesisWaymo Static scenes (test)
PSNR29.41
7
View Extrapolation (Lane Shift)PandaSet (test)
FID @ 2m64.65
6
View InterpolationPandaSet (test)
PSNR27
6
Novel View SynthesisKITTI 1.0 (NeuRAD)
PSNR27.91
5
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