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Fast facial shape recovery from a single image with general, unknown lighting by using tensor representation

机译:使用张量表示法从一般,未知光照下的单个图像快速恢复面部形状

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In this paper, we propose a fast 3-D facial shape recovery algorithm from a single image with general, unknown lighting. In order to derive the algorithm, we formulate a nonlinear least-square problem with two parameter vectors which are related to personal identity and light conditions. We then combine the spherical harmonics for the surface normals of a human face with tensor algebra and show that in a certain condition, the dimensionality of the least-square problem can be further reduced to one-tenth of the regular subspace-based model by using tensor decomposition (N-mode SVD), which greatly speeds up the computations. In order to enhance the shape recovery performance, we have incorporated prior information in updating the parameters. In the experiment, the proposed algorithm takes less than 0.4 s to reconstruct a face and shows a significant performance improvement over other reported schemes.
机译:在本文中,我们提出了从具有一般未知照明的单个图像中快速提取3D面部形状的算法。为了推导该算法,我们用两个与个人身份和光照条件有关的参数向量来制定非线性最小二乘问题。然后,我们将张紧代数与人脸表面法线的球谐函数相结合,证明在一定条件下,最小二乘问题的维数可以通过使用进一步减少到基于常规子空间模型的十分之一。张量分解(N模式SVD),可大大加快计算速度。为了提高形状恢复性能,我们在更新参数时加入了先验信息。在实验中,提出的算法用不到0.4 s的时间重建人脸,并且与其他报告的方案相比,性能得到了显着改善。

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