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Single-View View Synthesis with Multiplane Images

About

A recent strand of work in view synthesis uses deep learning to generate multiplane images (a camera-centric, layered 3D representation) given two or more input images at known viewpoints. We apply this representation to single-view view synthesis, a problem which is more challenging but has potentially much wider application. Our method learns to predict a multiplane image directly from a single image input, and we introduce scale-invariant view synthesis for supervision, enabling us to train on online video. We show this approach is applicable to several different datasets, that it additionally generates reasonable depth maps, and that it learns to fill in content behind the edges of foreground objects in background layers. Project page at https://single-view-mpi.github.io/.

Richard Tucker, Noah Snavely• 2020

Related benchmarks

TaskDatasetResultRank
Novel View SynthesisRealEstate10K t=5 (test)
LPIPS0.055
16
Novel View SynthesisRealEstate10K (RE10K) t=10 (test)
LPIPS0.106
14
View SynthesisKITTI (test)
PSNR19.5
11
View SynthesisStructured3D Easy Set (0.2 m to 0.3 m) 1.0
PSNR18.32
9
View SynthesisStructured3D Hard Set (1.0 m to 2.0 m) 1.0
PSNR16.56
9
View SynthesisFlowers Light Field dataset (test)
SSIM0.851
8
Novel View SynthesisMannequinChallenge t=3 v1 (test)
LPIPS0.349
6
Novel View SynthesisMannequinChallenge t=5 v1 (test)
LPIPS0.453
6
Single-view View SynthesisScanNet n < 15
LPIPS0.2632
4
Single-view View SynthesisScanNet (n < 30)
LPIPS0.3365
4
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