Shape-from-Polarisation: A Nonlinear Least Squares Approach

Ye Yu, Dizhong Zhu, W. Smith
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引用次数: 19

Abstract

In this paper we present a new type of approach for estimating surface height from polarimetric data, i.e. a sequence of images in which a linear polarising filter is rotated in front of a camera. In contrast to all previous shape-from-polarisation methods, we do not first transform the observed data into a polarisation image. Instead, we minimise the sum of squared residuals between predicted and observed intensities over all pixels and polariser angles. This is a nonlinear least squares optimisation problem in which the unknown is the surface height. The forward prediction is a series of transformations for which we provide analytical derivatives allowing the overall problem to be efficiently optimised using Gauss-Newton type methods with an analytical Jacobian matrix. The method is very general and can incorporate any (differentiable) illumination, reflectance or polarisation model. We also propose a variant of the method which uses image ratios to remove dependence on illumination and albedo. We demonstrate our methods on glossy objects, including with albedo variations, and provide comparison to a state of the art approach.
偏振形状:非线性最小二乘方法
在本文中,我们提出了一种从偏振数据估计表面高度的新方法,即在相机前旋转线性偏振滤光片的图像序列。与所有以前的偏振形状方法相反,我们不首先将观测数据转换为偏振图像。相反,我们最小化所有像素和偏振镜角度上预测和观测强度之间的平方残差之和。这是一个非线性最小二乘优化问题,其中未知的是表面高度。前向预测是一系列变换,我们为其提供解析导数,允许使用具有解析雅可比矩阵的高斯-牛顿型方法有效地优化整个问题。该方法非常通用,可以包含任何(可微分)照明、反射率或偏振模型。我们还提出了一种使用图像比率来消除对照度和反照率依赖的方法。我们展示了我们在光滑物体上的方法,包括反照率变化,并提供了与最先进方法的比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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