一个用于自动测量非姿势面部动作单元强度的框架

M. Mahoor, S. Cadavid, D. Messinger, J. Cohn
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引用次数: 122

摘要

本文提出了一个自动测量自然发生的面部动作强度的框架。自然主义的表达是不做作的自发行为。面部动作编码系统(FACS)是描述面部表情的黄金标准技术,它被解析为全面的、不重叠的动作单元(au)。在6点度量(即0到5)上,au的强度范围从没有到最大。尽管在识别非姿势动作单元的存在方面做出了努力,但测量它们的强度尚未得到全面研究。在本文中,我们开发了一个框架来测量从母婴现场面对面交流中捕获的视频中AU12(唇角拉动)和AU6(脸颊抬起)的强度。AU12和AU6是婴儿表情最具挑战性的情况(如婴儿面部纹理低)。人脸图像分析中存在的问题之一是视觉数据的维数过大。我们解决这个问题的方法是利用光谱回归技术将高维人脸图像投影到低维空间中。利用低维空间中表示的面部图像来训练支持向量机分类器来预测动作单元的强度。对几个婴儿和母亲的18分钟非摆姿势面部表情视频的分析表明,人类FACS编码器和我们的方法之间存在显著的一致性,这使得它成为自动测量非摆姿势面部动作单元强度的有效方法。
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A framework for automated measurement of the intensity of non-posed Facial Action Units
This paper presents a framework to automatically measure the intensity of naturally occurring facial actions. Naturalistic expressions are non-posed spontaneous actions. The facial action coding system (FACS) is the gold standard technique for describing facial expressions, which are parsed as comprehensive, nonoverlapping action units (Aus). AUs have intensities ranging from absent to maximal on a six-point metric (i.e., 0 to 5). Despite the efforts in recognizing the presence of non-posed action units, measuring their intensity has not been studied comprehensively. In this paper, we develop a framework to measure the intensity of AU12 (lip corner puller) and AU6 (cheek raising) in videos captured from infant-mother live face-to-face communications. The AU12 and AU6 are the most challenging case of infant's expressions (e.g., low facial texture in infant's face). One of the problems in facial image analysis is the large dimensionality of the visual data. Our approach for solving this problem is to utilize the spectral regression technique to project high dimensionality facial images into a low dimensionality space. Represented facial images in the low dimensional space are utilized to train support vector machine classifiers to predict the intensity of action units. Analysis of 18 minutes of captured video of non-posed facial expressions of several infants and mothers shows significant agreement between a human FACS coder and our approach, which makes it an efficient approach for automated measurement of the intensity of non-posed facial action units.
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