基于表面分类图像和主成分分析的三维人脸识别

Lei Yunqi, Dongjie Chen, Meiling Yuan, Qingmin Li, Zhenxiang Shi
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引用次数: 10

摘要

提出了一种基于人脸表面分类图像和主成分分析的三维人脸识别方法。在预处理步骤中,采用多水平b样条近似的曲面拟合算法对人脸表面的离散三维点进行归一化处理。然后,利用部分icp方法将三维人脸模型调整到正确的前位,以获得更好的识别性能。利用前两步得到的归一化人脸深度图像,通过计算每个点处的高斯曲率和均值曲率,对表面类型进行分类,并利用分类结果对人脸深度图像上不同类型的区域进行8个灰度级的标记。得到的灰度图像被称为表面分类图像(SCI),该图像代表人脸的三维特征,然后将其输入到主成分分析(PCA)过程中,得到SCI特征人脸进行人脸识别。在浙江大学三维人脸数据库ZJU-3DFED上进行的实验中,我们获得了94.5%的rank-1识别分数,比直接在人脸深度图像(而不是SCI)上使用PCA方法的结果高出16.5%。
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3D Face Recognition by Surface Classification Image and PCA
An approach of 3D face recognition by using of facial surface classification image and PCA is presented. In the step of pre-processing, the scattered 3D points of a facial surface are normalized by surface fitting algorithm using multilevel B-splines approximation. Then, partial-ICP method is utilized to adjust 3D face model to be in the right front pose for a better recognition performance. By using the normalized facial depth image been acquired through the two previous steps, and by calculating the Gaussian and mean curvatures at each point, the surface types are classified and the classification result is used to mark different kinds of area on the facial depth image by 8 gray-levels. This achieved gray image is named as Surface Classification Image (SCI) and the SCI now represents the 3D features of the face and then it is input to the process of PCA to obtain the SCI eigenfaces to recognize the face. In the experiments conducted on 3D Facial database ZJU-3DFED of Zhejiang University, we obtained the rank-1 identification score of 94.5%, which outperformed the result of using PCA method directly on the face depth image (instead of SCI) by 16.5%.
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