Example-guided 3D Human Face Reconstruction from Sparse Landmarks

Jing Yuan, Xingce Wang, Zhongke Wu
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引用次数: 1

Abstract

This paper presents an example-guided facial reconstruction method for creating a 3D refined human face model from sparse landmarks, with a given example dataset. It is challenging to rapidly and accurately generate a high-precision 3D face model from raw scan data with a simple setup and processing. The main roadblock is that existing 3D face databases are far from adequate to describe the full variability of faces. To address these problems, we analyse the characteristics of examples from a relatively small sample set for more reliable reconstruction knowledge, as well as a new landmark marking method to simplify the description of human face shape. Principal component analysis is used to extract the feature patterns from samples and simplify data representation. Then the 3D face model and the landmarks are correlated via a mapping matrix. An effective mapping algorithm is devised to learn the transformation relation from landmarks to 3D face shapes. Compared with existing methods, the proposed method can generate a high-precision 3D face model from sparse landmarks more accurately. The application and extensive experimental evaluations on the Chinese craniofacial database and FaceWarehouse database show that our method can achieve high accuracy, effectiveness and robustness in 3D face reconstruction.
示例引导的稀疏地标3D人脸重建
本文提出了一种基于实例指导的人脸重建方法,该方法利用稀疏特征点创建三维精细人脸模型。通过简单的设置和处理,从原始扫描数据快速准确地生成高精度三维人脸模型是一项挑战。主要的障碍是现有的3D人脸数据库远远不足以描述人脸的全部可变性。为了解决这些问题,我们从相对较小的样本集中分析样本的特征,以获得更可靠的重建知识,并提出一种新的地标标记方法来简化人脸形状的描述。利用主成分分析从样本中提取特征模式,简化数据表示。然后通过映射矩阵将三维人脸模型与地标进行关联。设计了一种有效的映射算法来学习从地标到三维人脸形状的转换关系。与现有方法相比,该方法可以更准确地从稀疏地标生成高精度的三维人脸模型。在中国颅面数据库和FaceWarehouse数据库上的应用和广泛的实验评估表明,该方法在三维人脸重建中具有较高的准确性、有效性和鲁棒性。
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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