NFPLight: Deep SVBRDF Estimation via
the Combination of Near and Far Field Point lighting

Li Wang, Lianghao Zhang, Fangzhou Gao, YuZhen Kang, Jiawan Zhang

Abstract (Has Audio 👇)

Recovering spatial-varying bi-directional reflectance distribution function (SVBRDF) from a few hand-held captured images has been a challenging task in computer graphics. Benefiting from the learned priors from data, single-image methods can obtain plausible SVBRDF estimation results. However, the extremely limited appearance information in a single image does not suffice for high-quality SVBRDF reconstruction. Although increasing the number of inputs can improve the reconstruction quality, it also affects the efficiency of real data capture and adds significant computational burdens. Therefore, the key challenge is to minimize the required number of inputs, while keeping high-quality results. To address this, we propose maximizing the effective information in each input through a novel co-located capture strategy that combines near-field and far-field point lighting. To further enhance effectiveness, we theoretically investigate the inherent relation between two images. The extracted relation is strongly correlated with the slope of specular reflectance, substantially enhancing the precision of roughness map estimation. Additionally, we designed the registration and denoising modules to meet the practical requirements of hand-held capture. Quantitative assessments and qualitative analysis have demonstrated that our method achieves superior SVBRDF estimations compared to previous approaches. All source codes will be publicly released.

Supplementary Video

bilibili

BibTeX

                        @article{10.1145/3687978,
                            author = {Wang, Li and Zhang, Lianghao and Gao, Fangzhou and Kang, Yuzhen and Zhang, Jiawan},
                            title = {NFPLight:  Deep SVBRDF Estimation via the Combination of Near and Far Field Point Lighting},
                            year = {2024},
                            month = nov,
                            volume = {43},
                            number = {6},
                            doi = {10.1145/3687978},
                            articleno = {274},
                            numpages = {11},
                            }
                    

Acknowledgements

We would like to thank anonymous reviewers for their comments, Qishen Wang for his assistance in data collection, Xin Tong for his support. This work is partially supported by National Natural Science Foundation of China (62172295).