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Effect of Facial Feature Points Selection on 3D Face Shape Reconstruction Using Regularization

机译:面部特征点选择对正规化三维面形重建的影响

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This paper aims to test the regularized 3D face shape reconstruction algorithm to find out how the feature points selection affect the accuracy of the 3D face reconstruction based on the PCA-model. A case study on USF Human ID 3D database has been used to study these effect. We found that, if the test face is from the training set, then any set of any number greater than or equal to the number of training faces can reconstruct exact 3D face. If the test face does not belong to the training set, it will hardly reconstruct the exact 3D face using 3D PCA-based models. However, it could reconstruct an approximate face shape depending on the number of feature points and the weighting factor. Furthermore, the accuracy of reconstruction by a large number of feature points (< 150) is relatively the same in all cases even with different locations of points on the face. The regularized algorithm has also been tested to reconstruct 3D face shapes from a number of feature points selected manually from real 2D face images. Some 2D images from CMU-PIE database have been used to visualize the resulted 3D face shapes.
机译:本文旨在测试正规化的3D面部形状重建算法,了解特征点选择如何影响基于PCA模型的3D面重建的准确性。对USF人体ID 3D数据库的案例研究已被用于研究这些效果。我们发现,如果测试面是来自训练集,那么任何大于或等于训练面的数量的任何一组就可以重建精确的3D面。如果测试面不属于训练集,则几乎不会使用基于3D PCA的模型重建精确的3D面。然而,它可以根据特征点和加权因子的数量来重建近似面部形状。此外,即使在面上的不同点位置,大量特征点(<150)的重建的准确性也相对相同。还测试了正则化算法以从真实的2D面部图像手动选择的多个特征点重建3D面形状。来自CMU-PIE数据库的一些2D图像已被用于可视化产生的3D面形状。

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