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Face Recognition Using Local Geometrical Features - PCA with Euclidean Classifier

机译:面部识别使用当地几何特征 - 带欧几里德分类器的PCA

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The goal of this research is to get the minimum features and produce better recognition rates. Before doing the feature selection, we investigate automatic methods for detecting face anchor points with 412 3D-facial points of 60 individuals. There are 7 images per subject including views presenting light rotations and facial expressions. Each images have twelve anchor points which are Right Outer Eye, Right Inner Eye, Left Outer Eye, Left Inner Eye, Upper nose point, Nose Tip, Right Nose Base, Left Nose Base, Right Outer Face, Left Outer Face, Chin, and Upper Face. All the control points are based on the measurement on an absolute scale (mm). After all the control points have been determined, we will extract a relevant set of features. These features are classified in 3: (1) distance of mass points, (2) angle measurements, and (3) angle measurements. There are fifty-three local geometrical features extracted from 3D points human faces to model the face for face recognition and the discriminating power calculation is to show the valuable feature among all the features. Experiment performed on the GavabDB dataset (412 faces) show that our algorithm achieved 86% of success when respectively the first rank matched.
机译:这项研究的目的是得到最小的功能和产生更好的识别率。做特征选择之前,我们探讨与412 60个人的三维面部检测点面对锚点自动方法。有每个受试者包括视图呈现光旋转和面部表情7倍的图像。每个图像具有十二个定位点右键眼外,右内眼,左眼外,内侧左眼睛,鼻子上部点,鼻尖,对鼻基地,左鼻基地,右外侧面,左外侧面,下巴,上面。所有控制点是基于上一个绝对标度(毫米)测量。在所有的控制点已经确定,我们将提取相关的功能集。这些功能被分类在3:(1)距离的质点,(2)角的测量,和(3)的角度测量。有53从3D提取的局部几何特征点的人脸在脸上面部识别模型和区分能力计算是显示所有功能中的有价值的功能。实验上GavabDB数据集(412面)表明,我们的算法取得了成功的86%时分别与所述第一秩匹配进行。

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