MagFace: A Universal Representation for Face Recognition and Quality Assessment

CVPR 2021  ยท  Qiang Meng, Shichao Zhao, Zhida Huang, Feng Zhou ยท

The performance of face recognition system degrades when the variability of the acquired faces increases. Prior work alleviates this issue by either monitoring the face quality in pre-processing or predicting the data uncertainty along with the face feature. This paper proposes MagFace, a category of losses that learn a universal feature embedding whose magnitude can measure the quality of the given face. Under the new loss, it can be proven that the magnitude of the feature embedding monotonically increases if the subject is more likely to be recognized. In addition, MagFace introduces an adaptive mechanism to learn a wellstructured within-class feature distributions by pulling easy samples to class centers while pushing hard samples away. This prevents models from overfitting on noisy low-quality samples and improves face recognition in the wild. Extensive experiments conducted on face recognition, quality assessments as well as clustering demonstrate its superiority over state-of-the-arts. The code is available at https://github.com/IrvingMeng/MagFace.

PDF Abstract CVPR 2021 PDF CVPR 2021 Abstract

Results from the Paper


 Ranked #1 on Face Verification on IJB-C (training dataset metric)

     Get a GitHub badge
Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Face Verification IJB-C MagFace++ TAR @ FAR=1e-4 95.97% # 14
TAR @ FAR=1e-5 90.36% # 10
training dataset MS1MV2 # 1
model R100 # 1

Methods