基于等高线地图回归网络的三维人脸重建

Tongxin Wei, Qingbao Li, Jinjin Liu
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引用次数: 0

摘要

二维人脸图像代表的是信息不完整的人脸。从单张二维图像中重建三维人脸是一个具有应用价值的难题。单一特征提取方法使生成的三维人脸图像失真。本文采用基于轮廓的人脸分割方法重建三维人脸图像。在使用等高线分割人脸时,我们主要关注人脸的边缘和轮廓信息。与全局三维人脸重建方法不同,我们将全局和局部人脸信息结合起来进行三维人脸重建。我们的方法是:首先对人脸进行轮廓分割,提取分割后图像的特征。其次,我们学习完整人脸图像中每个关键点的局部二值特征,然后将特征组合并使用线性回归检测关键点;第三,利用卷积神经网络学习三维变形模型的回归系数,显著提高了重建的质量和效率。我们从二维图像中回归三维可变形模型的系数,以呈现用于三维人脸重建的人脸对齐。我们在二维人脸和三维人脸图像之间进行特征映射,并通过映射关系对三维人脸模型进行监控和验证。该方法不仅可以从各个角度重建人脸图像,而且可以减少人脸的变形。我们让不同表情和姿势下的人脸图像更贴合。
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CRNet:3D Face Reconstruction with Contour Map Regression Network
2D face images represent faces with incomplete information. 3D face reconstruction from a single 2D image is a challenging problem with application value. The single feature extraction method distorts the generated 3D face image. In this paper, we use contour-based face segmentation method to reconstruct 3D face image. We focus on the edge and contour information of the face when using contour lines to segment the face. Different from the global 3D face reconstruction method, we combine the global and local face information to carry out 3D face reconstruction. Our method: First of all, we do contour segmentation for human faces and extract the features of the segmented images. Second, we learn the local binary features of each keypoint in a complete face image, then combine the features and use linear regression to detect the keypoints. Thirdly, we use Convolutional Neural Networks to learn the regression 3D Morphable Model coefficient and significantly improve the quality and efficiency of reconstruction. We regressed the coefficients of the 3D deformable model from 2D images to present face alignment for 3D face reconstruction. We carry out feature mapping between 2D face and 3D face image, and monitor and verify 3D face model through mapping relationship. Our method can not only reconstruct face images from all angles, but also reduce face deformities. We made face images fit better under different expressions and postures.
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