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3-D Face Recognition With Local Shape Descriptors

机译:具有局部形状描述符的3D人脸识别

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摘要

In this paper, we present a novel automatic approach based on local shape descriptors to discriminate 3-D facial scans of different individuals. Our approach begins with registration, smoothing and uniform resampling of 3-D face data. Then, uniformly resampled 3-D face data are used to generate shape index, curvedness, gaussian and mean curvature values on each point of the data. Hence we obtain 2-D matrices of shape index, curvedness, gaussian and mean curvature values representing 3-D geometry information. SIFT descriptors are applied to 2-D matrices and high dimensional feature vector having shape information is obtained. Finally, high dimensional feature vector is projected to the low dimensional subspace where projection matrix is calculated by linear discriminant analysis. Features in this low dimensional subspace are compared by using cosine distance similarity metric. Proposed method is shown to have 98.35% and 98.25% detection rates at 0.001 false alarm rate for All vs. All and ROC3 experiments respectively on FRGC v2.0 database. To the best of our knowledge, these are the best results among similar studies available in 3-D face recognition literature.
机译:在本文中,我们提出了一种基于局部形状描述符的新颖自动方法,以区分不同个人的3-D面部扫描。我们的方法始于3D人脸数据的配准,平滑和统一重采样。然后,使用统一重新采样的3-D面部数据在数据的每个点上生成形状指数,弯曲度,高斯和平均曲率值。因此,我们获得形状索引,弯曲度,高斯和平均曲率值的2-D矩阵,它们表示3-D几何信息。将SIFT描述符应用于2-D矩阵,并且获得具有形状信息的高维特征向量。最后,将高维特征向量投影到低维子空间,在其中通过线性判别分析计算投影矩阵。通过使用余弦距离相似性度量比较此低维子空间中的特征。在FRGC v2.0数据库上,对于All vs. All和ROC3实验,建议的方法在0.001误报率下的检出率分别为98.35%和98.25%。据我们所知,这是3-D人脸识别文献中类似研究中最好的结果。

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