CR-FIQA: Face Image Quality Assessment by Learning Sample Relative Classifiability

12/13/2021
by   Fadi Boutros, et al.
2

The quality of face images significantly influences the performance of underlying face recognition algorithms. Face image quality assessment (FIQA) estimates the utility of the captured image in achieving reliable and accurate recognition performance. In this work, we propose a novel learning paradigm that learns internal network observations during the training process. Based on that, our proposed CR-FIQA uses this paradigm to estimate the face image quality of a sample by predicting its relative classifiability. This classifiability is measured based on the allocation of the training sample feature representation in angular space with respect to its class center and the nearest negative class center. We experimentally illustrate the correlation between the face image quality and the sample relative classifiability. As such property is only observable for the training dataset, we propose to learn this property from the training dataset and utilize it to predict the quality measure on unseen samples. This training is performed simultaneously while optimizing the class centers by an angular margin penalty-based softmax loss used for face recognition model training. Through extensive evaluation experiments on eight benchmarks and four face recognition models, we demonstrate the superiority of our proposed CR-FIQA over state-of-the-art (SOTA) FIQA algorithms.

READ FULL TEXT

page 1

page 2

page 21

page 22

page 23

page 24

page 25

page 26

research
10/21/2021

A Deep Insight into Measuring Face Image Utility with General and Face-specific Image Quality Metrics

Quality scores provide a measure to evaluate the utility of biometric sa...
research
06/06/2023

A Quality Aware Sample-to-Sample Comparison for Face Recognition

Currently available face datasets mainly consist of a large number of hi...
research
04/23/2023

CoReFace: Sample-Guided Contrastive Regularization for Deep Face Recognition

The discriminability of feature representation is the key to open-set fa...
research
11/26/2021

QMagFace: Simple and Accurate Quality-Aware Face Recognition

Face recognition systems have to deal with large variabilities (such as ...
research
07/27/2020

Contraction Mapping of Feature Norms for Classifier Learning on the Data with Different Quality

The popular softmax loss and its recent extensions have achieved great s...
research
04/03/2022

AdaFace: Quality Adaptive Margin for Face Recognition

Recognition in low quality face datasets is challenging because facial a...
research
07/24/2018

Multicolumn Networks for Face Recognition

The objective of this work is set-based face recognition, i.e. to decide...

Please sign up or login with your details

Forgot password? Click here to reset