基于微面的高镜面光度计立体反射模型

Lixiong Chen, Yinqiang Zheng, Boxin Shi, Art Subpa-Asa, Imari Sato
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引用次数: 18

摘要

一个精确、稳定和可逆的表面反射率模型是利用真实材料进行光度立体成像成功的关键。该领域的最新发展使各种类型表面的形状恢复技术成为可能,但在高镜面反射存在的情况下,直接估计表面法线的有效解决方案仍然难以捉摸。在本文中,我们推导了一个基于解析各向同性微面的反射模型,在此基础上,为高镜面定制了一个物理可解释的近似。通过这种近似,我们确定了表面恢复问题与椭球旋转拟合问题之间的等价性,其中后者可以被描述为多项式系统。此外,我们还设计了一个快速、非迭代、全局最优的求解器。在合成图像和真实图像上的实验结果验证了我们的模型,并表明我们的解决方案可以在目标应用领域稳定地提供优越的性能。
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A Microfacet-Based Reflectance Model for Photometric Stereo with Highly Specular Surfaces
A precise, stable and invertible model for surface reflectance is the key to the success of photometric stereo with real world materials. Recent developments in the field have enabled shape recovery techniques for surfaces of various types, but an effective solution to directly estimating the surface normal in the presence of highly specular reflectance remains elusive. In this paper, we derive an analytical isotropic microfacet-based reflectance model, based on which a physically interpretable approximate is tailored for highly specular surfaces. With this approximate, we identify the equivalence between the surface recovery problem and the ellipsoid of revolution fitting problem, where the latter can be described as a system of polynomials. Additionally, we devise a fast, non-iterative and globally optimal solver for this problem. Experimental results on both synthetic and real images validate our model and demonstrate that our solution can stably deliver superior performance in its targeted application domain.
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