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Facial-expression recognition based on a low-dimensional temporal feature space

机译:基于低维时间特征空间的面部表情识别

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This paper suggests a facial-expression recognition in accordance with face video sequences based on a newly low-dimensional feature space proposed. Indeed, we extract a Pyramid of uniform Temporal Local Binary Pattern representation, using only XT and YT orthogonal planes (PTLBP (u2)). Then, a Wrapper method is applied to select the most discriminating sub-regions, and therefore, reduce the feature space that is going to be projected on a low-dimensional feature space by applying the Principal Component Analysis (PCA). Support Vector Machine (SVM) and C4.5 algorithm have been tested for the classification of facial expressions. Experiments conducted on CK + and MMI, which are the two famous facial-expression databases, have shown the effectiveness of the approach proposed under a lab-controlled environment with more than 97% of recognition rate as well as under an uncontrolled environment with more than 92%.
机译:本文提出了一种基于人脸视频序列的人脸表情识别方法,该算法基于提出的新的低维特征空间。实际上,我们仅使用XT和YT正交平面(PTLBP(u2))提取了统一的时间局部二进制模式表示的金字塔。然后,使用包装器方法来选择最具区分性的子区域,因此,通过应用主成分分析(PCA),可以减少将要投影到低维特征空间上的特征空间。支持向量机(SVM)和C4.5算法已针对面部表情进行了测试。在两个著名的面部表情数据库CK +和MMI上进行的实验表明,该方法在实验室控制的环境中的识别率超过97%以及在非控制的环境中的识别率超过90%时是有效的。 92%。

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