基于局部傅立叶系数和傅立叶描述子的面部表情识别

Gibran Benitez-Garcia, Tomoaki Nakamura, M. Kaneko
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引用次数: 12

摘要

最近大众媒体传播(如社交媒体和手机)的蓬勃发展促进了自动面部表情识别(FER)的更多应用。因此,人类的面部表情必须通过数字设备进行编码和识别。然而,这一过程必须在图像照明变化和部分遮挡的反复问题下进行。因此,在本文中,我们提出了一个基于局部傅立叶系数和面部傅立叶描述子的全自动FER系统。外观和几何特征的综合力量用于描述眼睛-眉毛,鼻子和嘴巴的特定面部区域。所有的属性都基于傅里叶变换和支持向量机。因此,我们的方案克服了诸如光照变化、部分遮挡、图像旋转、冗余和降维等问题。为了证明我们的建议的有效性,我们进行了几项测试,并使用三个标准数据库:CK+、MUG和TFEID进行了评估。此外,评估结果表明,每个数据库的平均识别率达到了比本文调查的大多数最先进的技术更高的性能。
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Facial Expression Recognition Based on Local Fourier Coefficients and Facial Fourier Descriptors
The recent boom of mass media communication (such as social media and mobiles) has boosted more applications of automatic facial expression recognition (FER). Thus, human facial expressions have to be encoded and recognized through digital devices. However, this process has to be done under recurrent problems of image illumination changes and partial occlusions. Therefore, in this paper, we propose a fully automated FER system based on Local Fourier Coefficients and Facial Fourier Descriptors. The combined power of appearance and geometric features is used for describing the specific facial regions of eyes-eyebrows, nose and mouth. All based on the attributes of the Fourier Transform and Support Vector Machines. Hence, our proposal overcomes FER problems such as illumination changes, partial occlusion, image rotation, redundancy and dimensionality reduction. Several tests were performed in order to demonstrate the efficiency of our proposal, which were evaluated using three standard databases: CK+, MUG and TFEID. In addition, evaluation results showed that the average recognition rate of each database reaches higher performance than most of the state-of-the-art techniques surveyed in this paper.
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