Can Facial Pose and Expression Be Separated with Weak Perspective Camera?

Evangelos Sariyanidi, Casey J Zampella, Robert T Schultz, Birkan Tunc
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引用次数: 4

Abstract

Separating facial pose and expression within images requires a camera model for 3D-to-2D mapping. The weak perspective (WP) camera has been the most popular choice; it is the default, if not the only option, in state-of-the-art facial analysis methods and software. WP camera is justified by the supposition that its errors are negligible when the subjects are relatively far from the camera, yet this claim has never been tested despite nearly 20 years of research. This paper critically examines the suitability of WP camera for separating facial pose and expression. First, we theoretically show that WP causes pose-expression ambiguity, as it leads to estimation of spurious expressions. Next, we experimentally quantify the magnitude of spurious expressions. Finally, we test whether spurious expressions have detrimental effects on a common facial analysis application, namely Action Unit (AU) detection. Contrary to conventional wisdom, we find that severe pose-expression ambiguity exists even when subjects are not close to the camera, leading to large false positive rates in AU detection. We also demonstrate that the magnitude and characteristics of spurious expressions depend on the point distribution model used to model the expressions. Our results suggest that common assumptions about WP need to be revisited in facial expression modeling, and that facial analysis software should encourage and facilitate the use of the true camera model whenever possible.

弱透视相机能分离面部姿态和表情吗?
在图像中分离面部姿势和表情需要一个用于3d到2d映射的相机模型。弱透视(WP)相机一直是最受欢迎的选择;在最先进的面部分析方法和软件中,这即使不是唯一的选择,也是默认的。当拍摄对象离相机相对较远时,WP相机的误差可以忽略不计,这一假设是合理的,然而,尽管近20年的研究,这一说法从未得到验证。本文批判性地考察了WP相机在分离面部姿势和表情方面的适用性。首先,我们从理论上表明,WP会导致姿势-表情歧义,因为它会导致对虚假表情的估计。接下来,我们通过实验量化虚假表达的大小。最后,我们测试了虚假表情是否对常见的面部分析应用产生不利影响,即动作单元(AU)检测。与传统观点相反,我们发现即使受试者不靠近相机,也存在严重的姿势-表情歧义,导致AU检测的假阳性率很高。我们还证明了伪表达式的大小和特征取决于用于模拟表达式的点分布模型。我们的研究结果表明,在面部表情建模中需要重新审视关于WP的常见假设,并且面部分析软件应尽可能鼓励和促进使用真实的相机模型。
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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CiteScore
43.50
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