A Benchmark Dataset and Evaluation for Non-Lambertian and Uncalibrated Photometric StereoDownload PDFOpen Website

2019 (modified: 18 Nov 2022)IEEE Trans. Pattern Anal. Mach. Intell. 2019Readers: Everyone
Abstract: Classic photometric stereo is often extended to deal with real-world materials and work with unknown lighting conditions for practicability. To quantitatively evaluate non-Lambertian and uncalibrated photometric stereo, a photometric stereo image dataset containing objects of various shapes with complex reflectance properties and high-quality ground truth normals is still missing. In this paper, we introduce the `DiLiGenT' dataset with calibrated Directional Lightings, objects of General reflectance with different shininess, and `ground Truth' normals from high-precision laser scanning. We use our dataset to quantitatively evaluate state-of-the-art photometric stereo methods for general materials and unknown lighting conditions, selected from a newly proposed photometric stereo taxonomy emphasizing non-Lambertian and uncalibrated methods. The dataset and evaluation results are made publicly available, and we hope it can serve as a benchmark platform that inspires future research.
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