A 3D face matching framework

F. T. Haar, R. Veltkamp
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引用次数: 43

Abstract

Many 3D face matching techniques have been developed to perform face recognition. Among these techniques are variants of 3D facial curve matching, which are techniques that reduce the amount of face data to one or a few 3D curves. The face's central profile, for instance, proved to work well. However, the selection of the optimal set of 3D curves and the best way to match them is still underexposed. We propose a 3D face matching framework that allows profile and contour based face matching. Using this framework we evaluate profile and contour types including those described in literature, and select subsets of facial curves for effective and efficient face matching. Results on the 3D face retrieval track of SHREC'07 (the 3D SHape Retrieval Contest) shows the highest mean average precision achieved so far, using only three facial curves of 45 samples each.
三维人脸匹配框架
许多3D人脸匹配技术已经被开发出来进行人脸识别。在这些技术中有3D人脸曲线匹配的变体,即将人脸数据量减少到一条或几条3D曲线的技术。例如,脸部的中心轮廓被证明是有效的。然而,选择最优的3D曲线集和最佳的匹配方式仍然是曝光不足。我们提出了一个3D人脸匹配框架,允许基于轮廓和轮廓的人脸匹配。使用该框架,我们评估轮廓和轮廓类型,包括文献中描述的,并选择面部曲线子集进行有效和高效的面部匹配。在SHREC'07 (3D形状检索大赛)的三维人脸检索轨道上,仅使用了三条面部曲线,每条曲线45个样本,结果显示迄今为止获得的平均精度最高。
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