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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Joint Face Alignment and 3D Face Reconstruction with Application to Face Recognition
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Joint Face Alignment and 3D Face Reconstruction with Application to Face Recognition

机译:联合人脸对齐和3D人脸重建及其在人脸识别中的应用

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摘要

Face alignment and 3D face reconstruction are traditionally accomplished as separated tasks. By exploring the strong correlation between 2D landmarks and 3D shapes, in contrast, we propose a joint face alignment and 3D face reconstruction method to simultaneously solve these two problems for 2D face images of arbitrary poses and expressions. This method, based on a summation model of 3D faces and cascaded regression in 2D and 3D shape spaces, iteratively and alternately applies two cascaded regressors, one for updating 2D landmarks and the other for 3D shape. The 3D shape and the landmarks are correlated via a 3D-to-2D mapping matrix, which is updated in each iteration to refine the location and visibility of 2D landmarks. Unlike existing methods, the proposed method can fully automatically generate both pose-and-expression-normalized (PEN) and expressive 3D faces and localize both visible and invisible 2D landmarks. Based on the PEN 3D faces, we devise a method to enhance face recognition accuracy across poses and expressions. Both linear and nonlinear implementations of the proposed method are presented and evaluated in this paper. Extensive experiments show that the proposed method can achieve the state-of-the-art accuracy in both face alignment and 3D face reconstruction, and benefit face recognition owing to its reconstructed PEN 3D face.
机译:脸部对齐和3D脸部重构传统上是作为单独的任务完成的。相反,通过探索2D界标与3D形状之间的强相关性,我们提出了一种联合人脸对齐和3D人脸重建方法,以同时解决任意姿势和表情的2D人脸图像的这两个问题。该方法基于3D面的求和模型以及2D和3D形状空间中的级联回归,迭代地和交替地应用两个级联回归变量,一个用于更新2D界标,另一个用于3D形状。 3D形状和地标通过3D到2D映射矩阵进行关联,该矩阵在每次迭代中都会更新,以完善2D地标的位置和可见性。与现有方法不同,所提出的方法可以完全自动生成姿势和表情标准化(PEN)和富有表现力的3D人脸,并对可见和不可见2D界标进行定位。基于PEN 3D人脸,我们设计了一种方法来提高跨姿势和表情的人脸识别精度。本文提出并评估了该方法的线性和非线性实现。大量的实验表明,该方法在人脸对齐和3D人脸重建方面都可以达到最新的精度,并且由于其重建的PEN 3D人脸,因此有利于人脸识别。

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