Outdoor scene relighting is a challenging problem that requires good understanding of the scene geometry, illumination and albedo. Current techniques are completely supervised, requiring high quality synthetic renderings to train a solution. Such renderings are synthesized using priors learned from limited data. In contrast, we propose a self-supervised approach for relighting. Our approach is trained only on corpora of images collected from the internet without any user-supervision. This virtually endless source of training data allows training a general relighting solution. Our approach first decomposes an image into its albedo, geometry and illumination. A novel relighting is then produced by modifying the illumination parameters. Our solution capture shadow using a dedicated shadow prediction map, and does not rely on accurate geometry estimation. We evaluate our technique subjectively and objectively using a new dataset with ground-truth relighting. Results show the ability of our technique to produce photo-realistic and physically plausible results, that generalizes to unseen scenes.
@article{arxiv.2107.03106,
title = {Self-supervised Outdoor Scene Relighting},
author = {Ye Yu and Abhimitra Meka and Mohamed Elgharib and Hans-Peter Seidel and Christian Theobalt and William A. P. Smith},
journal= {arXiv preprint arXiv:2107.03106},
year = {2021}
}
Comments
Published in ECCV '20, http://gvv.mpi-inf.mpg.de/projects/SelfRelight/