Non-Lambertian Model-based Facial Shape Recovery from Single Image Under Unknown General Illumination

S. Elhabian, Eslam A. Mostafa, H. Rara, A. Farag
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引用次数: 6

Abstract

Through depth perception, humans have the ability to determine distances based on a single 2D image projected on their retina, where shape-from-shading (SFS) provides a mean to mimic such a phenomenon. The goal of this paper is to recover 3D facial shape from a single image of unknown general illumination, while relaxing the non-realistic assumption of Lambert Ian reflectance. Prior shape, albedo and reflectance models from real data, which are metric in nature, are incorporated into the shape recovery framework. Adopting a frequency-space based representation of the image irradiance equation, we propose an appearance model, termed as Harmonic Projection Images, which accounts explicitly for different human skin types as well as complex illumination conditions. Assuming skin reflectance obeys Torrance-Sparrow model, we prove analytically that it can be represented by at most 5th order harmonic basis whose closed form is provided. The recovery framework is a non-iterative approach which incorporates regression-like algorithm in the minimization process. Our experiments on synthetic and real images illustrate the robustness of our appearance model vis-a-vis illumination variation.
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未知光照下基于非lambertian模型的单幅图像人脸形状恢复
通过深度感知,人类有能力根据投射在视网膜上的单个2D图像来确定距离,其中形状-阴影(SFS)提供了一种模拟这种现象的方法。本文的目标是从未知一般照明的单幅图像中恢复三维面部形状,同时放松兰伯特伊恩反射率的非现实假设。将实际数据的先验形状、反照率和反射率模型(本质上是度量的)纳入形状恢复框架。采用基于频率空间的图像辐照度方程表示,我们提出了一种称为谐波投影图像的外观模型,该模型明确地考虑了不同的人体皮肤类型以及复杂的照明条件。假设皮肤反射率服从Torrance-Sparrow模型,我们解析地证明了它最多可以用5阶调和基表示,并给出了其闭合形式。恢复框架是一种非迭代方法,在最小化过程中引入了类回归算法。我们在合成和真实图像上的实验说明了我们的外观模型相对于光照变化的鲁棒性。
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