Reconstructing A Large Scale 3D Face Dataset for Deep 3D Face Identification
Cuican Yu, Zihui Zhang, Huibin Li

TL;DR
This paper introduces a novel framework that reconstructs millions of 3D face scans from 2D images to enhance deep 3D face recognition, achieving state-of-the-art results on multiple datasets.
Contribution
It proposes a method to generate 3D face data from 2D images and a two-phase training approach for improved 3D face identification accuracy.
Findings
Achieves state-of-the-art rank-1 scores on FRGC v2.0, Bosphorus, and BU-3DFE datasets.
Reconstructed 3D facial surfaces significantly improve recognition performance.
Demonstrates the effectiveness of 2D-aided 3D face recognition methods.
Abstract
Deep learning methods have brought many breakthroughs to computer vision, especially in 2D face recognition. However, the bottleneck of deep learning based 3D face recognition is that it is difficult to collect millions of 3D faces, whether for industry or academia. In view of this situation, there are many methods to generate more 3D faces from existing 3D faces through 3D face data augmentation, which are used to train deep 3D face recognition models. However, to the best of our knowledge, there is no method to generate 3D faces from 2D face images for training deep 3D face recognition models. This letter focuses on the role of reconstructed 3D facial surfaces in 3D face identification and proposes a framework of 2D-aided deep 3D face identification. In particular, we propose to reconstruct millions of 3D face scans from a large scale 2D face database (i.e.VGGFace2), using a deep…
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Taxonomy
TopicsFace recognition and analysis · Face and Expression Recognition · Biometric Identification and Security
MethodsDiffusion-Convolutional Neural Networks
