Algorithmic Fairness in Face Morphing Attack Detection

11/23/2021
by   Raghavendra Ramachandra, et al.
0

Face morphing attacks can compromise Face Recognition System (FRS) by exploiting their vulnerability. Face Morphing Attack Detection (MAD) techniques have been developed in recent past to deter such attacks and mitigate risks from morphing attacks. MAD algorithms, as any other algorithms should treat the images of subjects from different ethnic origins in an equal manner and provide non-discriminatory results. While the promising MAD algorithms are tested for robustness, there is no study comprehensively bench-marking their behaviour against various ethnicities. In this paper, we study and present a comprehensive analysis of algorithmic fairness of the existing Single image-based Morph Attack Detection (S-MAD) algorithms. We attempt to better understand the influence of ethnic bias on MAD algorithms and to this extent, we study the performance of MAD algorithms on a newly created dataset consisting of four different ethnic groups. With Extensive experiments using six different S-MAD techniques, we first present benchmark of detection performance and then measure the quantitative value of the algorithmic fairness for each of them using Fairness Discrepancy Rate (FDR). The results indicate the lack of fairness on all six different S-MAD methods when trained and tested on different ethnic groups suggesting the need for reliable MAD approaches to mitigate the algorithmic bias.

READ FULL TEXT
research
01/10/2022

3D Face Morphing Attacks: Generation, Vulnerability and Detection

Face Recognition systems (FRS) have been found vulnerable to morphing at...
research
03/01/2023

Backdoor for Debias: Mitigating Model Bias with Backdoor Attack-based Artificial Bias

With the swift advancement of deep learning, state-of-the-art algorithms...
research
07/06/2020

On the Influence of Ageing on Face Morph Attacks: Vulnerability and Detection

Face morphing attacks have raised critical concerns as they demonstrate ...
research
01/05/2020

Deep Face Representations for Differential Morphing Attack Detection

The vulnerability of facial recognition systems to face morphing attacks...
research
06/11/2020

Morphing Attack Detection – Database, Evaluation Platform and Benchmarking

Morphing attacks have posed a severe threat to Face Recognition System (...
research
11/25/2019

Mitigate Bias in Face Recognition using Skewness-Aware Reinforcement Learning

Racial equality is an important theme of international human rights law,...
research
02/24/2022

Analyzing Human Observer Ability in Morphing Attack Detection – Where Do We Stand?

While several works have studied the vulnerability of automated FRS and ...

Please sign up or login with your details

Forgot password? Click here to reset