论文标题

基于强大拟合可变形的形状模型的面部额额化与3D地标

Face Frontalization Based on Robustly Fitting a Deformable Shape Model to 3D Landmarks

论文作者

Kang, Zhiqi, Sadeghi, Mostafa, Horaud, Radu

论文摘要

面部额叶化包括从任意观看的面部综合面孔的脸部。本文的主要贡献是一种可靠的面部对准方法,可以使像素到像素翘曲。该方法同时估算了两个3D点集之间的刚性变换(尺度,旋转和翻译)以及非刚性变形:从任意观看的面部提取的一组3D地标,以及一组3D地标参数化,由正面观看的可视而不良的面部模型参数化。该方法的一个重要优点是它可以处理噪声(小扰动)和异常值(大错误)的能力。我们建议通过广义学生的T促进性分布函数对嵌入式和离群值进行建模,这是一种对数据中非高斯错误的重尾分布。我们详细描述了相关的期望最大化(EM)算法,该算法在(i)刚性参数的估计之间交替,(ii)变形参数和(iii)Student-T分布参数。我们还建议在额叶的面部和相应的正面看见的面之间使用零均值的归一化互相关,以评估额骨的性能。为此,我们使用一个包含一对配置文件观看和正面观看面的数据集。基于直接图像到图像比较的该评估与间接评估相反,基于分析额叶化对面部识别的影响。

Face frontalization consists of synthesizing a frontally-viewed face from an arbitrarily-viewed one. The main contribution of this paper is a robust face alignment method that enables pixel-to-pixel warping. The method simultaneously estimates the rigid transformation (scale, rotation, and translation) and the non-rigid deformation between two 3D point sets: a set of 3D landmarks extracted from an arbitrary-viewed face, and a set of 3D landmarks parameterized by a frontally-viewed deformable face model. An important merit of the proposed method is its ability to deal both with noise (small perturbations) and with outliers (large errors). We propose to model inliers and outliers with the generalized Student's t-probability distribution function, a heavy-tailed distribution that is immune to non-Gaussian errors in the data. We describe in detail the associated expectation-maximization (EM) algorithm that alternates between the estimation of (i) the rigid parameters, (ii) the deformation parameters, and (iii) the Student-t distribution parameters. We also propose to use the zero-mean normalized cross-correlation, between a frontalized face and the corresponding ground-truth frontally-viewed face, to evaluate the performance of frontalization. To this end, we use a dataset that contains pairs of profile-viewed and frontally-viewed faces. This evaluation, based on direct image-to-image comparison, stands in contrast with indirect evaluation, based on analyzing the effect of frontalization on face recognition.

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