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3D face reconstruction from images under arbitrary illumination using Support Vector Regression

机译:3D使用支持向量回归从图像下的图像重建

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We present an algorithm for 3D face reconstruction from multiple images under arbitrary illumination. A computer screen is used to illuminate a face from different angles. Three images under different illuminations are used to compute its basis vectors using SVD. The first basis vectors from training faces are projected to a PCA subspace and used as input patterns to train multiple Support Vector Machines. For training, the ground truth 3D face models acquired with a laser scanner are projected to a 13 dimensional PCA subspace and used as output labels. A separate function is learned using Support Vector Regression to estimate each of the 13 parameters of the 3D face. During testing, three images of an unknown face under arbitrary illumination are used to estimate its 3D model. Experiments were performed on 106 subjects and quantitative results are reported by comparing the reconstructed 3D faces to ground truth laser scans. Qualitative results are also reported on the Yale B database.
机译:我们在任意照明下从多个图像呈现3D面重建算法。计算机屏幕用于从不同角度照射面部。在不同照明下的三个图像用于使用SVD计算其基础向量。来自训练面的第一个基础向量被投影到PCA子空间,并用作培训多个支持向量机的输入模式。对于培训,使用激光扫描仪获取的地面真理3D面部模型被投影到13维PCA子空间并用作输出标签。使用支持向量回归学习单独的功能以估计3D面的13个参数中的每一个。在测试期间,任意照明下未知面孔的三个图像用于估计其3D模型。通过将重建的3D面与地面真理激光扫描进行比较,对106个受试者进行实验,并报道了定量结果。在Yale B数据库上还报告了定性结果。

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