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D-NeRF: Neural Radiance Fields for Dynamic Scenes

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Neural rendering techniques combining machine learning with geometric reasoning have arisen as one of the most promising approaches for synthesizing novel views of a scene from a sparse set of images. Among these, stands out the Neural radiance fields (NeRF), which trains a deep network to map 5D input coordinates (representing spatial location and viewing direction) into a volume density and view-dependent emitted radiance. However, despite achieving an unprecedented level of photorealism on the generated images, NeRF is only applicable to static scenes, where the same spatial location can be queried from different images. In this paper we introduce D-NeRF, a method that extends neural radiance fields to a dynamic domain, allowing to reconstruct and render novel images of objects under rigid and non-rigid motions from a \emph{single} camera moving around the scene. For this purpose we consider time as an additional input to the system, and split the learning process in two main stages: one that encodes the scene into a canonical space and another that maps this canonical representation into the deformed scene at a particular time. Both mappings are simultaneously learned using fully-connected networks. Once the networks are trained, D-NeRF can render novel images, controlling both the camera view and the time variable, and thus, the object movement. We demonstrate the effectiveness of our approach on scenes with objects under rigid, articulated and non-rigid motions. Code, model weights and the dynamic scenes dataset will be released.

Albert Pumarola, Enric Corona, Gerard Pons-Moll, Francesc Moreno-Noguer• 2020

Related benchmarks

TaskDatasetResultRank
Novel View SynthesisZJU-MoCap (test)
SSIM0.922
43
Novel View SynthesisD-NeRF synthetic (test)
Average PSNR31.69
42
Novel View SynthesisBlender (test)
PSNR30.5
37
Novel View SynthesisSynthetic dynamic scenes
PSNR30.5
19
Dynamic Scene ReconstructionN3DV coffee martini (test)
PSNR29.4
18
Dynamic Scene Novel View SynthesisNVIDIA video dataset average over all scenes 112
PSNR21.49
17
Inference EfficiencySynthetic Lego scene (test)
Storage (MB)4
15
Novel View SynthesisNvidia Dataset
PSNR21.48
15
Dynamic Novel View SynthesisD-NeRF dynamic, synthetic (test)
PSNR38.93
12
Novel depth synthesisnuScenes
RMSE7.1089
10
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