Example-based 3D face reconstruction from uncalibrated frontal and profile images

Jing Li, Shuqin Long, Dan Zeng, Qijun Zhao
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引用次数: 5

Abstract

Reconstructing 3D face models from multiple uncalibrated 2D face images is usually done by using a single reference 3D face model or some gender/ethnicity-specific 3D face models. However, different persons, even those of the same gender or ethnicity, usually have significantly different faces in terms of their overall appearance, which forms the base of person recognition using faces. Consequently, existing 3D reference model based methods have limited capability of reconstructing 3D face models for a large variety of persons. In this paper, we propose to explore a reservoir of diverse reference models to improve the 3D face reconstruction performance. Specifically, we convert the face reconstruction problem into a multi-label segmentation problem. Its energy function is formulated from different cues, including 1) similarity between the desired output and the initial model, 2) color consistency between different views, 3) smoothness constraint on adjacent pixels, and 4) model consistency within local neighborhood. Experimental results on challenging datasets demonstrate that the proposed algorithm is capable of recovering high quality face models in both qualitative and quantitative evaluations.
基于实例的基于未校准正面和侧面图像的3D人脸重建
从多个未校准的2D人脸图像重建3D人脸模型通常通过使用单个参考3D人脸模型或一些性别/种族特定的3D人脸模型来完成。然而,不同的人,即使是同一性别或种族的人,通常在整体外观上也有显著的不同,这就形成了人脸识别的基础。因此,现有的基于三维参考模型的方法对大量人群的三维人脸模型重建能力有限。在这篇论文中,我们提出探索一个多样化的参考模型库来提高三维人脸重建的性能。具体来说,我们将人脸重建问题转化为多标签分割问题。它的能量函数由不同的线索组成,包括1)期望输出与初始模型之间的相似性,2)不同视图之间的颜色一致性,3)相邻像素的平滑约束,以及4)局部邻域内的模型一致性。在具有挑战性的数据集上的实验结果表明,该算法能够在定性和定量评估中恢复高质量的人脸模型。
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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