波前
渲染(计算机图形)
计算机科学
折射
正常
曲面重建
光场
光学
点云
计算机视觉
曲面(拓扑)
人工智能
数学
物理
几何学
作者
Ziyu Wang,Wei Yang,Jianhua Cao,Qiang Hu,Lu Xu,Jiguo Yu,Jingyi Yu
标识
DOI:10.1109/iccp56744.2023.10233838
摘要
We present a novel Neural Refractive Field (NeReF) to recover wavefront of transparent fluids by simultaneously estimating the surface position and normal of the fluid front. Unlike prior arts that treat the reconstruction target as a single layer of the surface, NeReF is specifically formulated to recover a volumetric normal field with its corresponding density field. A query ray will be refracted by NeReF according to its accumulated refractive point and normal, and we employ the correspondences and uniqueness of refracted ray for NeReF optimization. We show NeReF, as a global optimization scheme, can more robustly tackle refraction distortions detrimental to traditional methods for correspondence matching. Furthermore, the continuous NeReF representation of wavefront enables view synthesis as well as normal integration. We validate our approach on both synthetic and real data and show it is particularly suitable for sparse multi-view acquisition. We hence build a small light field array and experiment on various surface shapes to demonstrate high fidelity NeReF reconstruction.
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