Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

DANI-Net: Uncalibrated Photometric Stereo by Differentiable Shadow Handling, Anisotropic Reflectance Modeling, and Neural Inverse Rendering

About

Uncalibrated photometric stereo (UPS) is challenging due to the inherent ambiguity brought by the unknown light. Although the ambiguity is alleviated on non-Lambertian objects, the problem is still difficult to solve for more general objects with complex shapes introducing irregular shadows and general materials with complex reflectance like anisotropic reflectance. To exploit cues from shadow and reflectance to solve UPS and improve performance on general materials, we propose DANI-Net, an inverse rendering framework with differentiable shadow handling and anisotropic reflectance modeling. Unlike most previous methods that use non-differentiable shadow maps and assume isotropic material, our network benefits from cues of shadow and anisotropic reflectance through two differentiable paths. Experiments on multiple real-world datasets demonstrate our superior and robust performance.

Zongrui Li, Qian Zheng, Boxin Shi, Gang Pan, Xudong Jiang• 2023

Related benchmarks

TaskDatasetResultRank
Surface Normal EstimationDiLiGenT 1.0 (full)
BALL Error1.64
10
Light CalibrationDiLiGenT standard (test)
BALL Directional Error1.23
7
Surface Normal EstimationDiLiGenT10^2 BALL 1.0 (test)
POM Angular Error2.04
5
Surface Normal EstimationDiLiGenT10^2 BUNNY 1.0 (test)
POM Error19.55
5
Light CalibrationLight Stage Data Gallery
PLANT Directional Error5.76
4
Surface Normal EstimationDILIGENT102 Anisotropic group - AL material
Angular Error (Ball)3.94
4
Surface Normal EstimationDILIGENT102 Anisotropic group - CU material
Ball Error11.75
4
Surface Normal EstimationDILIGENT102 Anisotropic group - STEEL material
Ball Error8.03
4
Light CalibrationApple & Gourd Dataset
APPLE Directional Error2.4
4
Showing 9 of 9 rows

Other info

Code

Follow for update