利用3D变形模型和ElasticFace进行单眼三维人脸重建

Abd Salam At Taqwa, Z. Zainuddin, Z. Tahir
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引用次数: 0

摘要

随着计算机视觉和图形学的发展,3D变形模型(3D Morphable Model)作为一种从二维单眼人脸图像重建三维人脸的模型,已经取得了令人满意的效果。然而,使用3D变形模型以弱监督的方式重建3D人脸存在挑战,因为它不需要标签作为基础事实,只依赖于2D单眼图像与3D人脸之间的特征相似性。本研究通过比较身份特征提取,采用弱监督的三维人脸重建方法。在这种情况下,用于身份特征提取的深度人脸识别技术是ArcFace, CosFace和ElasticFace。三维人脸重建过程分为:1)刚性拟合,将三维人脸特征拟合到二维单眼图像的人脸特征中;2)非刚性拟合特征相似度,采用混合级弱监督,应用多种深度人脸识别模型。重建的结果随后使用NoW挑战进行评估。在NoW协议上的实验结果表明,ElasticFace-Arc是单眼三维人脸重建中最好的深度人脸识别方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monocular 3D Face Reconstruction Using 3D Morphable Model and ElasticFace
3D Morphable Model, one of the models used to reconstruct 3D face from 2D monocular image of face, has achieved satisfactory results along with computer vision and graphics development. However, reconstructing 3D face using a 3D Morphable Model in a weakly-supervised manner has its challenges because it does not require labels as ground truth and only relies on the similarity of features between 2D monocular image and 3D face. This research uses weakly-supervised 3D face reconstruction by comparing identity feature extraction. In this case, deep face recognition techniques used for identity feature extraction are ArcFace, CosFace, and ElasticFace. The 3D face reconstruction process is divided into 1) rigid fitting to fit the 3D face landmarks into face landmarks of 2D monocular image and 2) non-rigid fitting feature similarity with hybrid-level weak supervision applying diverse deep face recognition models. The results of the reconstruction are subsequently evaluated using the NoW challenge. Experimental results on the NoW protocol show that ElasticFace-Arc is the best deep face recognition for monocular 3d face reconstruction.
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