SeaThru-NeRF: Neural Radiance Fields in Scattering Media

Deborah Levy1, Amit Peleg1, Naama Pearl1, Dan Rosenbaum2, Derya Akkaynak13,
1Dept. of Marine Technologies,
School of Marine Sciences
University of Haifa, Israel
2Dept. of Computer Science,
University of Haifa, Israel
3The Inter-University Institute for Marine Sciences in Eilat,
Israel

CVPR 2023

Underwater Image Novel Views Rendering

Underwater Image Restoration

Abstract

Research on neural radiance fields (NeRFs) for novel view generation is exploding with new models and extensions. However, a question that remains unanswered is what happens in underwater or foggy scenes where the medium strongly influences the appearance of objects. Thus far, NeRF and its variants have ignored these cases. However, since the NeRF framework is based on volumetric rendering, it has inherent capability to account for the medium’s effects, once modeled appropriately. We develop a new rendering model for NeRFs in scattering media, which is based on the SeaThru image formation model, and suggest a suitable architecture for learning both scene information and medium parameters. We demonstrate the strength of our method using simulated and real-world scenes, correctly rendering novel photorealistic views underwater. Even more excitingly, we can render clear views of these scenes, removing the medium between the camera and the scene and reconstructing the appearance and depth of far objects, which are severely occluded by the medium.

Underwater Image Formation Model

overview

SeaThru-NeRF: Medium Aware Rendering

overview

SeaThru-NeRF Architecture

overview

Additional Results - Color Restoration

Japanese Gardens

IUI3

Panama

Additional Results - Novel Views