Scalable, Detailed and Mask-Free Universal Photometric Stereo
About
In this paper, we introduce SDM-UniPS, a groundbreaking Scalable, Detailed, Mask-free, and Universal Photometric Stereo network. Our approach can recover astonishingly intricate surface normal maps, rivaling the quality of 3D scanners, even when images are captured under unknown, spatially-varying lighting conditions in uncontrolled environments. We have extended previous universal photometric stereo networks to extract spatial-light features, utilizing all available information in high-resolution input images and accounting for non-local interactions among surface points. Moreover, we present a new synthetic training dataset that encompasses a diverse range of shapes, materials, and illumination scenarios found in real-world scenes. Through extensive evaluation, we demonstrate that our method not only surpasses calibrated, lighting-specific techniques on public benchmarks, but also excels with a significantly smaller number of input images even without object masks.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Photometric Stereo | DiLiGenT (All 96 images) | Ball Error1.5 | 20 | |
| Surface Normal Estimation | DiLiGenT-MV (test) | Normal MAE (Bear)4.79 | 8 | |
| Normal Reconstruction | DiLiGenT (full) | Ball MAE1.5 | 7 | |
| Normal Reconstruction | Luces (all 52 images) | Ball MAE13.3 | 6 | |
| Normal Prediction | PS-Verse (test) | MAE10.25 | 5 | |
| Albedo Prediction | PS-Verse (test) | PSNR24.04 | 3 | |
| Metallic Prediction | PS-Verse (test) | PSNR23.68 | 3 | |
| Roughness Prediction | PS-Verse (test) | PSNR23.87 | 3 |