Neural Scene Flow Fields for Space-Time View Synthesis of Dynamic Scenes

Zhengqi Li, Simon Niklaus, Noah Snavely, Oliver Wang

11/26/2020

Keywords: Dynamic/Temporal

Venue: CVPR 2021

Bibtex: @inproceedings{li2021nsff, booktitle = {Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)}, author = {Zhengqi Li and Simon Niklaus and Noah Snavely and Oliver Wang}, title = {Neural Scene Flow Fields for Space-Time View Synthesis of Dynamic Scenes}, year = {2021}, url = {http://arxiv.org/abs/2011.13084v3}, entrytype = {inproceedings}, id = {li2021nsff} }

Abstract

We present a method to perform novel view and time synthesis of dynamic scenes, requiring only a monocular video with known camera poses as input. To do this, we introduce Neural Scene Flow Fields, a new representation that models the dynamic scene as a time-variant continuous function of appearance, geometry, and 3D scene motion. Our representation is optimized through a neural network to fit the observed input views. We show that our representation can be used for complex dynamic scenes, including thin structures, view-dependent effects, and natural degrees of motion. We conduct a number of experiments that demonstrate our approach significantly outperforms recent monocular view synthesis methods, and show qualitative results of space-time view synthesis on a variety of real-world videos.

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