A reconstruction method of 3D face model from front and side 2D face images using deep learning model

Ryota Nishio, M. Oono, T. Goto, Takahiro Kishimoto, M. Shishibori
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Abstract

In this study, we focus on automatic three-dimensional (3D) face reconstruction from two-dimensional (2D) face images using a deep learning model. The conventional methods have been used to develop models that can reconstruct 3D faces from 2D images. However, for Japanese faces, the models cannot accurately reconstruct images, large errors occur in areas such as the nose and mouth, because most of the training data are foreigner’s face images. To solve this problem, we proposed a method that uses not only a frontal 2D face image but also a side-view 2D face image for the 3D face reconstruction, and the resulting 3D model is a combination of two 3D reconstructed models, which are created from the frontal and side-view 2D face images using iterative closest point algorithm. As a result, the accuracy of the proposed method is better than the conventional method.
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一种基于深度学习模型的二维正面和侧面人脸图像三维人脸模型重建方法
在本研究中,我们专注于使用深度学习模型从二维(2D)人脸图像中自动重建三维(3D)人脸。传统的方法已经被用来开发可以从二维图像重建三维人脸的模型。然而,对于日本人的人脸,由于训练数据大多是外国人的人脸图像,模型无法准确地重建图像,在鼻子和嘴巴等区域会出现较大的误差。为了解决这一问题,我们提出了一种同时使用正面和侧面二维人脸图像进行三维人脸重建的方法,所得到的三维模型是使用迭代最近点算法从正面和侧面二维人脸图像创建的两个三维重建模型的组合。结果表明,该方法的精度优于传统方法。
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