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iFER: facial expression recognition using automatically selected geometric eye and eyebrow features

机译:iFER:使用自动选择的几何眼和眉毛特征进行面部表情识别

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摘要

Facial expressions have an important role in interpersonal communications and estimation of emotional states or intentions. Automatic recognition of facial expressions has led to many practical applications and became one of the important topics in computer vision. We present a facial expression recognition system that relies on geometry-based features extracted from eye and eyebrow regions of the face. The proposed system detects keypoints on frontal face images and forms a feature set using geometric relationships among groups of detected keypoints. Obtained feature set is refined and reduced using the sequential forward selection (SFS) algorithm and fed to a support vector machine classifier to recognize five facial expression classes. The proposed system, iFER (eye-eyebrow only facial expression recognition), is robust to lower face occlusions that may be caused by beards, mustaches, scarves, etc. and lower face motion during speech production. Preliminary experiments on benchmark datasets produced promising results outperforming previous facial expression recognition studies using partial face features, and comparable results to studies using whole face information, only slightly lower by similar to 2.5% compared to the best whole face facial recognition system while using only similar to 1/3 of the facial region. (c) 2018 SPIE and IS&T
机译:面部表情在人际交流和情绪状态或意图估计中具有重要作用。面部表情的自动识别已导致许多实际应用,并成为计算机视觉中的重要主题之一。我们提出了一种面部表情识别系统,该系统依赖于从脸部的眼睛和眉毛区域提取的基于几何的特征。提出的系统检测正面面部图像上的关键点,并使用检测到的关键点组之间的几何关系形成特征集。使用顺序前向选择(SFS)算法对获得的特征集进行完善和缩减,并将其馈入支持向量机分类器以识别五个面部表情类。所提出的系统,iFER(仅眉毛的面部表情识别),对于可能由胡须,胡须,围巾等以及语音生成过程中的下脸运动引起的下脸遮挡具有较强的鲁棒性。在基准数据集上进行的初步实验产生了可喜的结果,优于使用部分面部特征的先前面部表情识别研究,并且与使用全脸信息进行的研究相比具有可比的结果,与最佳的全脸面部识别系统相比,仅使用类似的方法,其结果仅略低了2.5%到面部区域的1/3。 (c)2018 SPIE和IS&T

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