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Neural Reflectance for Shape Recovery with Shadow Handling

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This paper aims at recovering the shape of a scene with unknown, non-Lambertian, and possibly spatially-varying surface materials. When the shape of the object is highly complex and that shadows cast on the surface, the task becomes very challenging. To overcome these challenges, we propose a coordinate-based deep MLP (multilayer perceptron) to parameterize both the unknown 3D shape and the unknown reflectance at every surface point. This network is able to leverage the observed photometric variance and shadows on the surface, and recover both surface shape and general non-Lambertian reflectance. We explicitly predict cast shadows, mitigating possible artifacts on these shadowing regions, leading to higher estimation accuracy. Our framework is entirely self-supervised, in the sense that it requires neither ground truth shape nor BRDF. Tests on real-world images demonstrate that our method outperform existing methods by a significant margin. Thanks to the small size of the MLP-net, our method is an order of magnitude faster than previous CNN-based methods.

Junxuan Li, Hongdong Li• 2022

Related benchmarks

TaskDatasetResultRank
Photometric StereoDiLiGenT (All 96 images)
Ball Error2.4
20
Surface Normal EstimationDiLiGenT 1.0 (full)
BALL Error2.43
10
Surface Normal EstimationDiLiGenT v1.0 (test)
Ball MAE2.43
9
Geometry ReconstructionOur Synthetic RGB Dataset 1.0 (test)
Depth L10.8794
5
Image ReconstructionDiLiGenT (test)
PSNR (ball)37.82
2
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