基于人脸动作时空依赖的鲁棒性自发面部表情识别建模与开发

Yan Tong, Jixu Chen, Q. Ji
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引用次数: 4

摘要

面部动作为人类交流提供了各种类型的信息。然而,由于细微的面部变形、频繁的头部运动以及模糊和不确定的面部运动测量,识别自发的面部动作非常具有挑战性。因此,目前对面部动作识别的研究仅限于摆姿势的面部动作,而且通常是在正面视图下。自发性面部动作的特点是刚性的头部运动和非刚性的面部肌肉运动。更重要的是,刚性和非刚性面部运动之间的时空相互作用产生了有意义和自然的面部表现。认识到这一事实,我们引入了一个基于动态贝叶斯网络(DBN)的概率面部动作模型,以同时连贯地捕捉刚性和非刚性面部运动、它们的时空依赖关系以及它们的图像测量。引入先进的机器学习方法来学习基于训练数据和先验知识的概率面部动作模型。面部动作识别是通过概率推理,系统地将测量、官方动作与面部动作模型相结合来实现的。实验表明,该系统在识别自发面部动作方面取得了显著的进步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling and exploiting the spatio-temporal facial action dependencies for robust spontaneous facial expression recognition
Facial action provides various types of messages for human communications. Recognizing spontaneous facial actions, however, is very challenging due to subtle facial deformation, frequent head movements, and ambiguous and uncertain facial motion measurements. As a result, current research in facial action recognition is limited to posed facial actions and often in frontal view.Spontaneous facial action is characterized by rigid head movements and nonrigid facial muscular movements. More importantly, it is the spatiotemporal interactions among the rigid and nonrigid facial motions that produce a meaningful and natural facial display. Recognizing this fact, we introduce a probabilistic facial action model based on a dynamic Bayesian network (DBN) to simultaneously and coherently capture rigid and nonrigid facial motions, their spatiotemporal dependencies, and their image measurements. Advanced machine learning methods are introduced to learn the probabilistic facial action model based on both training data and prior knowledge. Facial action recognition is accomplished through probabilistic inference by systemically integrating measurements official motions with the facial action model. Experiments show that the proposed system yields significant improvements in recognizing spontaneous facial actions.
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