3D Face Recognition Using 3D Alignment for PCA

T. Russ, Chris Boehnen, Tanya Peters
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引用次数: 93

Abstract

This paper presents a 3D approach for recognizing faces based on Principal Component Analysis (PCA). The approach addresses the issue of proper 3D face alignment required by PCA for maximum data compression and good generalization performance for new untrained faces. This issue has traditionally been addressed by 2D data normalization, a step that eliminates 3D object size information important for the recognition process. We achieve correspondence of facial points by registering a 3D face to a scaled generic 3D reference face and subsequently perform a surface normal search algorithm. 3D scaling of the generic reference face is performed to enable better alignment of facial points while preserving important 3D size information in the input face. The benefits of this approach for 3D face recognition and dimensionality reduction have been demonstrated on components of the Face Recognition Grand Challenge (FRGC) database versions 1 and 2.
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基于PCA的三维人脸识别
提出了一种基于主成分分析(PCA)的三维人脸识别方法。该方法解决了PCA所需的适当的三维人脸对齐问题,以最大限度地压缩数据,并对新的未经训练的人脸具有良好的泛化性能。这个问题传统上是通过2D数据规范化来解决的,这一步骤消除了对识别过程很重要的3D对象大小信息。我们通过将三维人脸注册到缩放的通用三维参考人脸来实现人脸点的对应,然后执行表面法线搜索算法。执行通用参考人脸的3D缩放,以便更好地对齐人脸点,同时保留输入人脸中的重要3D尺寸信息。这种方法对3D人脸识别和降维的好处已经在人脸识别大挑战(FRGC)数据库版本1和2的组件上得到了证明。
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