SHREC’08 entry: 3D face recognition using facial contour curves

F. T. Haar, R. Veltkamp
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引用次数: 27

Abstract

In this work we compute the similarity of 3D faces using a set of eight contour curves. These contours were selected and matched using our 3D face matching framework. In previous work, we performed extensive research to the selection of distinctive facial curves for 3D face matching. To relate the performance of several of these curves to other face matching methods, we participated the Shape Retrieval Contest (SHREC) of 3D face scans. Within this contest we have used a set of eight C-contours and tested their face retrieval performance using two different distance measures. In an attempt to increase the expression invariance of these curves, we employed our 3D face matching framework to match either 100% of the selected features or the subset of the best 60% of the selected features. Results show that the selected distance measure can have a great influence on the distinctiveness of facial curves. In case of large variations in facia) expressiveness, the subset of the best 60% of the features increases the overall performance. With a recognition rate of 91.1% and a mean average precision of 0.693 our method performs reasonably well compared to other methods.
SHREC ' 08参赛项目:利用面部轮廓曲线进行三维人脸识别
在这项工作中,我们使用一组8条等高线来计算3D人脸的相似性。使用我们的3D人脸匹配框架选择和匹配这些轮廓。在之前的工作中,我们对3D人脸匹配中面部特征曲线的选择进行了广泛的研究。为了将这些曲线的性能与其他人脸匹配方法联系起来,我们参加了三维人脸扫描的形状检索比赛(SHREC)。在这次比赛中,我们使用了一组8个c形轮廓,并使用两种不同的距离测量方法测试了它们的面部检索性能。为了增加这些曲线的表达式不变性,我们使用我们的3D人脸匹配框架来匹配100%的选定特征或60%的最佳选定特征的子集。结果表明,选择的距离度量对面部曲线的显著性有很大影响。在面部表现力变化很大的情况下,最好的60%特征的子集提高了整体性能。与其他方法相比,该方法的识别率为91.1%,平均精度为0.693。
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