Back to Search Start Over

Neural-PBIR Reconstruction of Shape, Material, and Illumination

Authors :
Sun, Cheng
Cai, Guangyan
Li, Zhengqin
Yan, Kai
Zhang, Cheng
Marshall, Carl
Huang, Jia-Bin
Zhao, Shuang
Dong, Zhao
Publication Year :
2023

Abstract

Reconstructing the shape and spatially varying surface appearances of a physical-world object as well as its surrounding illumination based on 2D images (e.g., photographs) of the object has been a long-standing problem in computer vision and graphics. In this paper, we introduce an accurate and highly efficient object reconstruction pipeline combining neural based object reconstruction and physics-based inverse rendering (PBIR). Our pipeline firstly leverages a neural SDF based shape reconstruction to produce high-quality but potentially imperfect object shape. Then, we introduce a neural material and lighting distillation stage to achieve high-quality predictions for material and illumination. In the last stage, initialized by the neural predictions, we perform PBIR to refine the initial results and obtain the final high-quality reconstruction of object shape, material, and illumination. Experimental results demonstrate our pipeline significantly outperforms existing methods quality-wise and performance-wise.<br />Comment: ICCV 2023. Project page at https://neural-pbir.github.io/ Update Stanford-ORB results

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2304.13445
Document Type :
Working Paper