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Pose-Invariant Face Alignment via CNN-Based Dense 3D Model Fitting

机译:基于CNN的密集3D模型配件构成不变的脸部对齐

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摘要

Pose-invariant face alignment is a very challenging problem in computer vision, which is used as a prerequisite for many facial analysis tasks, e.g., face recognition, expression recognition, and 3D face reconstruction. Recently, there have been a few attempts to tackle this problem, but still more research is needed to achieve higher accuracy. In this paper, we propose a face alignment method that aligns an image with arbitrary poses, by combining the powerful cascaded CNN regressors, 3D Morphable Model (3DMM), and mirrorability constraint. The core of our proposed method is a novel 3DMM fitting algorithm, where the camera projection matrix parameters and 3D shape parameters are estimated by a cascade of CNN-based regressors. Furthermore, we impose the mirrorability constraint during the CNN learning by employing a novel loss function inside the siamese network. The dense 3D shape enables us to design pose-invariant appearance features for effective CNN learning. Extensive experiments are conducted on the challenging large-pose face databases (AFLW and AFW), with comparison to the state of the art.
机译:姿势不变的面向对齐是计算机视觉中的一个非常具有挑战性的问题,它被用作许多面部分析任务的先决条件,例如面部识别,表达式识别和3D面重建。最近,有几次尝试解决这个问题,但需要更多的研究来实现更高的准确性。在本文中,我们提出了一种面对对准方法,其通过组合强大的级联CNN回归,3D可线模型(3DMM)和可互动约束来对准具有任意姿势的图像。我们所提出的方法的核心是一种新型3DMM拟合算法,其中通过基于CNN的回归级数估计相机投影矩阵参数和3D形参数。此外,通过在暹罗网络内采用新颖的损失功能,我们在CNN学习期间强加了可视化限制。密集的3D形状使我们能够为有效的CNN学习设计姿势不变的外观功能。与挑战的大姿势面部数据库(AFLW和AFW)进行了广泛的实验,与现有技术相比。

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