在3D面部跟踪中捕捉细微的面部动作

Zhen Wen, Thomas S. Huang
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引用次数: 111

摘要

面部运动不仅会产生面部特征点的运动,还会产生细微的外观变化,如皱纹和阴影的变化。这些细微的变化对于分析(跟踪)和合成(动画)来说都是重要而困难的问题。以前的方法主要基于从大量训练外观示例中学习的模型。然而,所有可能的面部动作出现的空间是巨大的。因此,由于光照条件、个性和头部姿势的不同,收集涵盖所有可能变化的样本是不可行的。因此,这种模式很难适应新的情况。在本文中,我们提出了一种自适应技术来分析细微的面部外观变化。我们提出了一种新的基于比例图像的外观特征,该特征不依赖于人的面部反照率。该特征用于基于样本跟踪人脸外观变化。为了使样例外观模型适应新的人和光照条件,我们开发了一种基于em的在线算法。实验表明,该方法在涉及多种人物和光照条件的面部表情识别任务中改善了分类结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Capturing subtle facial motions in 3D face tracking
Facial motions produce not only facial feature points motions, but also subtle appearance changes such as wrinkles and shading changes. These subtle changes are important yet difficult issues for both analysis (tracking) and synthesis (animation). Previous approaches were mostly based on models learned from extensive training appearance examples. However, the space of all possible facial motion appearance is huge. Thus, it is not feasible to collect samples covering all possible variations due to lighting conditions, individualities, and head poses. Therefore, it is difficult to adapt such models to new conditions. In this paper, we present an adaptive technique for analyzing subtle facial appearance changes. We propose a new ratio-image based appearance feature, which is independent of a person's face albedo. This feature is used to track face appearance variations based on exemplars. To adapt the exemplar appearance model to new people and lighting conditions, we develop an online EM-based algorithm. Experiments show that the proposed method improves classification results in a facial expression recognition task, where a variety of people and lighting conditions are involved.
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