基于cnn密集三维模型拟合的大姿态人脸对齐

Amin Jourabloo, Xiaoming Liu
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引用次数: 304

摘要

大姿态人脸对齐是计算机视觉中一个非常具有挑战性的问题,它是人脸识别和三维人脸重建等许多重要视觉任务的先决条件。最近,已经有一些尝试来解决这个问题,但仍然需要更多的研究来获得高度精确的结果。本文将强大的级联CNN回归方法与3DMM相结合,提出了一种大姿态人脸图像的人脸对齐方法。我们将人脸对准描述为一个3DMM拟合问题,其中相机投影矩阵和3D形状参数通过基于cnn的级联回归估计。密集的3D形状允许我们设计姿态不变的外观特征,以有效地进行CNN学习。在具有挑战性的数据库(AFLW和AFW)上进行了广泛的实验,并与最新的状态进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large-Pose Face Alignment via CNN-Based Dense 3D Model Fitting
Large-pose face alignment is a very challenging problem in computer vision, which is used as a prerequisite for many important vision tasks, e.g, face recognition and 3D face reconstruction. Recently, there have been a few attempts to solve this problem, but still more research is needed to achieve highly accurate results. In this paper, we propose a face alignment method for large-pose face images, by combining the powerful cascaded CNN regressor method and 3DMM. We formulate the face alignment as a 3DMM fitting problem, where the camera projection matrix and 3D shape parameters are estimated by a cascade of CNN-based regressors. The dense 3D shape allows us to design pose-invariant appearance features for effective CNN learning. Extensive experiments are conducted on the challenging databases (AFLW and AFW), with comparison to the state of the art.
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