IEEE Trans Cybern. 2015 Aug;45(8):1499-510. doi: 10.1109/TCYB.2014.2354351. Epub 2014 Sep 29.
In this paper, we present a new idea to analyze facial expression by exploring some common and specific information among different expressions. Inspired by the observation that only a few facial parts are active in expression disclosure (e.g., around mouth, eye), we try to discover the common and specific patches which are important to discriminate all the expressions and only a particular expression, respectively. A two-stage multitask sparse learning (MTSL) framework is proposed to efficiently locate those discriminative patches. In the first stage MTSL, expression recognition tasks are combined to located common patches. Each of the tasks aims to find dominant patches for each expression. Secondly, two related tasks, facial expression recognition and face verification tasks, are coupled to learn specific facial patches for individual expression. The two-stage patch learning is performed on patches sampled by multiscale strategy. Extensive experiments validate the existence and significance of common and specific patches. Utilizing these learned patches, we achieve superior performances on expression recognition compared to the state-of-the-arts.
在本文中,我们提出了一个新的想法,通过探索不同表情之间的一些共同和特定信息来分析面部表情。受以下观察结果的启发:只有少数面部部位在表情揭示中是活跃的(例如,在嘴部、眼部周围),我们试图发现共同和特定的补丁,这些补丁对于区分所有表情和特定表情分别是重要的。提出了一个两阶段多任务稀疏学习(MTSL)框架,以有效地定位那些有判别力的补丁。在第一阶段 MTSL 中,将表情识别任务结合起来以定位共同补丁。每个任务的目的都是为每个表情找到占主导地位的补丁。其次,将两个相关的任务(面部表情识别和面部验证任务)耦合起来,以学习特定于个体表情的特定面部补丁。使用多尺度策略对补丁进行采样,然后进行两阶段补丁学习。广泛的实验验证了共同和特定补丁的存在和重要性。利用这些学习到的补丁,我们在表情识别方面的表现优于最先进的技术。