3D Face Reconstruction by Learning from Synthetic Data

Elad Richardson, Matan Sela, R. Kimmel
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引用次数: 283

Abstract

Fast and robust three-dimensional reconstruction of facial geometric structure from a single image is a challenging task with numerous applications. Here, we introduce a learning-based approach for reconstructing a three-dimensional face from a single image. Recent face recovery methods rely on accurate localization of key characteristic points. In contrast, the proposed approach is based on a Convolutional-Neural-Network (CNN) which extracts the face geometry directly from its image. Although such deep architectures outperform other models in complex computer vision problems, training them properly requires a large dataset of annotated examples. In the case of three-dimensional faces, currently, there are no large volume data sets, while acquiring such big-data is a tedious task. As an alternative, we propose to generate random, yet nearly photo-realistic, facial images for which the geometric form is known. The suggested model successfully recovers facial shapes from real images, even for faces with extreme expressions and under various lighting conditions.
基于合成数据学习的三维人脸重建
从单幅图像中快速、鲁棒地重建面部几何结构是一项具有挑战性的任务,具有众多的应用。在这里,我们介绍了一种基于学习的方法,用于从单个图像重建三维人脸。目前的人脸恢复方法依赖于关键特征点的精确定位。相比之下,该方法基于卷积神经网络(CNN),直接从图像中提取人脸几何形状。尽管这种深度架构在复杂的计算机视觉问题上优于其他模型,但正确训练它们需要大量带注释的示例数据集。对于三维人脸,目前还没有大容量的数据集,而获取这样的大数据是一项繁琐的任务。作为一种替代方案,我们建议生成随机的,但接近照片逼真的,几何形状已知的面部图像。所建议的模型成功地从真实图像中恢复面部形状,即使是在各种光照条件下具有极端表情的面部。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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