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Stereo Magnification with Multi-Layer Images

About

Representing scenes with multiple semi-transparent colored layers has been a popular and successful choice for real-time novel view synthesis. Existing approaches infer colors and transparency values over regularly-spaced layers of planar or spherical shape. In this work, we introduce a new view synthesis approach based on multiple semi-transparent layers with scene-adapted geometry. Our approach infers such representations from stereo pairs in two stages. The first stage infers the geometry of a small number of data-adaptive layers from a given pair of views. The second stage infers the color and the transparency values for these layers producing the final representation for novel view synthesis. Importantly, both stages are connected through a differentiable renderer and are trained in an end-to-end manner. In the experiments, we demonstrate the advantage of the proposed approach over the use of regularly-spaced layers with no adaptation to scene geometry. Despite being orders of magnitude faster during rendering, our approach also outperforms a recently proposed IBRNet system based on implicit geometry representation. See results at https://samsunglabs.github.io/StereoLayers .

Taras Khakhulin, Denis Korzhenkov, Pavel Solovev, Gleb Sterkin, Timotei Ardelean, Victor Lempitsky• 2022

Related benchmarks

TaskDatasetResultRank
Novel View SynthesisLLFF
PSNR22.19
124
Novel View SynthesisRealEstate10K
PSNR32.61
116
Novel View SynthesisGeneral Performance 256x256 images high-resolution context (test)
LPIPS0.119
10
Novel View SynthesisSWORD
Our Score81
4
Novel View SynthesisSWORD 512 x 1024 (test)
PSNR24.2
3
Novel View SynthesisLLFF
User Preference Score0.5442
2
Novel View SynthesisRealEstate10K
User Preference Score0.6391
2
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