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Spatiotemporal Local Monogenic Binary Patterns for Facial Expression Recognition

机译:时空局部单基因二进制模式的面部表情识别。

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摘要

Feature representation is an important research topic in facial expression recognition from video sequences. In this letter, we propose to use spatiotemporal monogenic binary patterns to describe both appearance and motion information of the dynamic sequences. Firstly, we use monogenic signals analysis to extract the magnitude, the real picture and the imaginary picture of the orientation of each frame, since the magnitude can provide much appearance information and the orientation can provide complementary information. Secondly, the phase-quadrant encoding method and the local bit exclusive operator are utilized to encode the real and imaginary pictures from orientation in three orthogonal planes, and the local binary pattern operator is used to capture the texture and motion information from the magnitude through three orthogonal planes. Finally, both concatenation method and multiple kernel learning method are respectively exploited to handle the feature fusion. The experimental results on the Extended Cohn–Kanade and Oulu–CASIA facial expression databases demonstrate that the proposed methods perform better than the state-of-the-art methods, and are robust to illumination variations.
机译:特征表示是视频序列中人脸表情识别的重要研究课题。在这封信中,我们建议使用时空单基因二进制模式来描述动态序列的外观和运动信息。首先,我们使用单基因信号分析来提取每个帧的方向的幅度,真实图片和虚构图片,因为幅度可以提供大量的外观信息,而方向可以提供互补的信息。其次,利用相象限编码方法和局部位异或运算符从三个正交平面中的方向对真实和虚构图像进行编码,并使用局部二进制模式运算符从幅值到3捕获图像的纹理和运动信息。正交平面。最后,分别利用级联方法和多核学习方法来处理特征融合。在扩展的Cohn–Kanade和Oulu–CASIA面部表情数据库上的实验结果表明,所提出的方法比最先进的方法性能更好,并且对照明变化具有鲁棒性。

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