3.8 Proceedings Paper

Non-Rigid Neural Radiance Fields: Reconstruction and Novel View Synthesis of a Dynamic Scene From Monocular Video

Publisher

IEEE
DOI: 10.1109/ICCV48922.2021.01272

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Funding

  1. ERC Consolidator Grant 4DReply [770784]
  2. Facebook Reality Labs

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NR-NeRF is a reconstruction and novel view synthesis approach for non-rigid dynamic scenes, allowing sophisticated renderings to be generated from novel virtual camera views using a single consumer-grade camera, without explicit supervision during training, resulting in stable outcomes.
We present Non-Rigid Neural Radiance Fields (NR-NeRF), a reconstruction and novel view synthesis approach for general non-rigid dynamic scenes. Our approach takes RGB images of a dynamic scene as input (e.g., from a monocular video recording), and creates a high-quality space-time geometry and appearance representation. We show that a single handheld consumer-grade camera is sufficient to synthesize sophisticated renderings of a dynamic scene from novel virtual camera views, e.g. a 'bullet-time' video effect. NR-NeRF disentangles the dynamic scene into a canonical volume and its deformation. Scene deformation is implemented as ray bending, where straight rays are deformed non-rigidly. We also propose a novel rigidity network to better constrain rigid regions of the scene, leading to more stable results. The ray bending and rigidity network are trained without explicit supervision. Our formulation enables dense correspondence estimation across views and time, and compelling video editing applications such as motion exaggeration. Our code will be open sourced.

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