PointFace: Point Set Based Feature Learning for 3D Face Recognition

Changyuan Jiang, Shisong Lin, Wei Chen, Feng Liu, Linlin Shen
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引用次数: 8

Abstract

Though 2D face recognition (FR) has achieved great success due to powerful 2D CNNs and large-scale training data, it is still challenged by extreme poses and illumination conditions. On the other hand, 3D FR has the potential to deal with aforementioned challenges in the 2D domain. However, most of available 3D FR works transform 3D surfaces to 2D maps and utilize 2D CNNs to extract features. The works directly processing point clouds for 3D FR is very limited in literature. To bridge this gap, in this paper, we propose a light-weight framework, named PointFace, to directly process point set data for 3D FR. Inspired by contrastive learning, our PointFace use two weight-shared encoders to directly extract features from a pair of 3D faces. A feature similarity loss is designed to guide the encoders to obtain discriminative face representations. We also present a pair selection strategy to generate positive and negative pairs to boost training. Extensive experiments on Lock3DFace and Bosphorus show that the proposed PointFace outperforms state-of-the-art 2D CNN based methods.
PointFace:基于点集的三维人脸识别特征学习
尽管由于强大的2D cnn和大规模的训练数据,2D人脸识别(FR)已经取得了很大的成功,但它仍然受到极端姿势和光照条件的挑战。另一方面,3D FR具有处理上述2D领域挑战的潜力。然而,大多数可用的3D FR作品将3D表面转换为2D地图,并利用2D cnn提取特征。文献中直接对点云进行三维FR处理的工作非常有限。为了弥补这一差距,本文提出了一个轻量级框架PointFace,用于直接处理3D人脸识别的点集数据。受对比学习的启发,我们的PointFace使用两个权重共享编码器直接从一对3D人脸中提取特征。设计了特征相似度损失来指导编码器获得判别性的人脸表示。我们还提出了一种配对选择策略来生成正对和负对,以促进训练。在Lock3DFace和Bosphorus上进行的大量实验表明,所提出的PointFace优于最先进的基于2D CNN的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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