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Regression Based Non-frontal Face Synthesis for Improved Identity Verification

机译:基于回归的非正面人脸合成,用于改进身份验证

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We propose a low-complexity face synthesis technique which transforms a 2D frontal view image into views at specific poses, without recourse to computationally expensive 3D analysis or iterative fitting techniques that may fail to converge. The method first divides a given image into multiple overlapping blocks, followed by synthesising a non-frontal representation through applying a multivariate linear regression model on a low-dimensional representation of each block. To demonstrate one application of the proposed technique, we augment a frontal face verification system by incorporating multi-view reference (gallery) images synthesised from the frontal view. Experiments on the pose subset of the FERET database show considerable reductions in error rates, especially for large deviations from the frontal view.
机译:我们提出了一种低复杂度的人脸合成技术,该技术可将2D正面视图图像转换为特定姿势下的视图,而无需依靠计算上昂贵的3D分析或可能无法收敛的迭代拟合技术。该方法首先将给定图像划分为多个重叠块,然后通过在每个块的低维表示上应用多元线性回归模型来合成非正面表示。为了演示所提出技术的一种应用,我们通过合并从正面视图合成的多视图参考(图库)图像来增强正面人脸验证系统。在FERET数据库的姿态子集上进行的实验表明,错误率显着降低,尤其是正面视图的偏差较大时。

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