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Gauss–Laguerre wavelet textural feature fusion with geometrical information for facial expression identification

机译:Gauss–Laguerre小波纹理特征融合与几何信息的面部表情识别

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Facial expressions are a valuable source of information that accompanies facial biometrics. Early detection of physiological and psycho-emotional data from facial expressions is linked to the situational awareness module of any advanced biometric system for personal state re/identification. In this article, a new method that utilizes both texture and geometric information of facial fiducial points is presented. We investigate Gauss–Laguerre wavelets, which have rich frequency extraction capabilities, to extract texture information of various facial expressions. Rotation invariance and the multiscale approach of these wavelets make the feature extraction robust. Moreover, geometric positions of fiducial points provide valuable information for upper/lower face action units. The combination of these two types of features is used for facial expression classification. The performance of this system has been validated on three public databases: the JAFFE, the Cohn-Kanade, and the MMI image.
机译:面部表情是面部生物识别信息的重要信息来源。从面部表情中早期检测生理和心理情感数据与用于个人状态重新/识别的任何高级生物识别系统的态势感知模块相关联。在本文中,提出了一种同时利用面部基准点的纹理和几何信息的新方法。我们研究了具有丰富的频率提取功能的高斯-拉格瑞小波,以提取各种面部表情的纹理信息。这些小波的旋转不变性和多尺度方法使特征提取具有鲁棒性。此外,基准点的几何位置为上/下脸部动作单元提供了有价值的信息。这两种类型的特征的组合用于面部表情分类。该系统的性能已在三个公共数据库上得到验证:JAFFE,Cohn-Kanade和MMI映像。

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