DeepView: View Synthesis with Learned Gradient Descent
About
We present a novel approach to view synthesis using multiplane images (MPIs). Building on recent advances in learned gradient descent, our algorithm generates an MPI from a set of sparse camera viewpoints. The resulting method incorporates occlusion reasoning, improving performance on challenging scene features such as object boundaries, lighting reflections, thin structures, and scenes with high depth complexity. We show that our method achieves high-quality, state-of-the-art results on two datasets: the Kalantari light field dataset, and a new camera array dataset, Spaces, which we make publicly available.
John Flynn, Michael Broxton, Paul Debevec, Matthew DuVall, Graham Fyffe, Ryan Overbeck, Noah Snavely, Richard Tucker• 2019
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Novel View Synthesis | Spaces (test) | PSNR34.23 | 24 | |
| View Synthesis | UrbanScene3D Sci-Art | PSNR12.22 | 22 | |
| View Synthesis | Mill 19 Building | PSNR13.28 | 6 | |
| View Synthesis | Mill 19 Rubble | PSNR14.47 | 6 | |
| View Synthesis | UrbanScene3D Campus | PSNR13.77 | 6 | |
| View Synthesis | Quad 6k | PSNR11.34 | 6 | |
| View Synthesis | UrbanScene3D Residence | PSNR13.07 | 6 | |
| View Synthesis | Spaces dense 12 views (val) | PSNR34.23 | 4 | |
| View Synthesis | Spaces small 4 views (val) | PSNR31.42 | 4 | |
| View Synthesis | Spaces medium 4 views (val) | PSNR32.38 | 4 |
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