同时检测多个面部动作单元的lp范数MTMKL框架

Xiao Zhang, M. Mahoor, S. Mavadati, J. Cohn
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引用次数: 38

摘要

面部动作单元(AU)检测是计算机视觉和模式识别领域的一个具有挑战性的课题。大多数现有方法设计的分类器都是单独检测AU或组合检测AU,而没有考虑AU之间的内在关系。本文提出了一种新的方法——低范数多任务多核学习(MTMKL),该方法联合学习分类器来检测多个目标的存在和不存在。lp-norm MTMKL是正则化多任务学习的扩展,它从支持向量机(SVM)中所有任务的给定基核集合中学习共享核。与现有方法相比,我们的方法具有以下几个优点:(1)将AU检测工作转化为MTL问题,在给定特定框架的情况下,通过利用它们之间的相互关系同时检测多个AU;(2)采用低范数多核学习提高分类器的判别能力。我们在CK+和DISFA数据库上的实验结果表明,所提出的方法优于最先进的AU检测方法。
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A lp-norm MTMKL framework for simultaneous detection of multiple facial action units
Facial action unit (AU) detection is a challenging topic in computer vision and pattern recognition. Most existing approaches design classifiers to detect AUs individually or AU combinations without considering the intrinsic relations among AUs. This paper presents a novel method, lp-norm multi-task multiple kernel learning (MTMKL), that jointly learns the classifiers for detecting the absence and presence of multiple AUs. lp-norm MTMKL is an extension of the regularized multi-task learning, which learns shared kernels from a given set of base kernels among all the tasks within Support Vector Machines (SVM). Our approach has several advantages over existing methods: (1) AU detection work is transformed to a MTL problem, where given a specific frame, multiple AUs are detected simultaneously by exploiting their inter-relations; (2) lp-norm multiple kernel learning is applied to increase the discriminant power of classifiers. Our experimental results on the CK+ and DISFA databases show that the proposed method outperforms the state-of-the-art methods for AU detection.
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