Abstract
Acquiring high-resolution 3D surface structures is a crucial task in computer vision as it provides more detailed surface textures and clearer structures. Photometric stereo can measure per-pixel surface normals of a 3D object using various shading cues. However, obtaining high-resolution images in a linear response photometric stereo imaging system can be challenging. Additionally, photometric stereo, as a per-pixel reconstruction method, requires higher-resolution surface normal maps to accurately depict complex surface structures, particularly in regions that demand more attention and precise reconstruction. Therefore, measuring high-resolution surface normals via low-resolution photometric stereo images is of great importance. Motivated by these, we propose a Super-resolution Photometric Stereo Network, namely SR-PSN. In order to address the issues of measuring the high-resolution surface normals from low-resolution photometric images, we mainly (1) apply a dual-position threshold normalization pre-processing scheme to effectively handle the spatially-varying reflectance of non-Lambertian surfaces, (2) adopt a local affinity feature module to learn the rich structural representation by explicitly revealing the neighbor relationships, (3) employ a parallel multi-scale feature extractor, which preserves high-resolution representations and deep feature extraction, and (4) propose a shared-weight regressor to handle the multi-scale features, to prevent the model collapsing into learning non-important features related to a certain fixed scale. Extensive ablation experiments validate the effectiveness of our proposed modules. Furthermore, quantitative experiments conducted on public benchmarks demonstrate that SR-PSN outperforms state-of-the-art calibrated photometric stereo methods. Notably, SR-PSN achieves superior results while utilizing photometric stereo images with only half the resolution of other methods. It effectively restores the structure of complex surfaces, producing a high-resolution normal map.
Original language | English |
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Article number | 10208243 |
Pages (from-to) | 1 |
Number of pages | 1 |
Journal | IEEE Transactions on Circuits and Systems for Video Technology |
DOIs | |
Publication status | Published - Aug 2023 |
Keywords
- 3D reconstruction
- deep neural networks
- Feature extraction
- Image reconstruction
- photometric stereo
- Reflectivity
- super-resolution
- Superresolution
- surface normal estimation
- Surface reconstruction
- Surface treatment
- Three-dimensional displays
ASJC Scopus subject areas
- Media Technology
- Electrical and Electronic Engineering