Measuring algorithmic bias is crucial both to assess algorithmic fairness, and to guide the improvement of algorithms. Current methods to measure algorithmic bias in computer vision, which are based on observational datasets, are inadequate for this task because they conflate algorithmic bias with dataset bias. To address this problem we develop an experimental method for measuring algorithmic bias of face analysis algorithms, which manipulates directly the attributes of interest, e.g., gender and skin tone, in order to reveal causal links between attribute variation and performance change. Our proposed method is based on generating synthetic ``transects'' of matched sample images that are designed to differ along specific attributes wh...
Face recognition (FR) systems have a growing effect on critical decision-making processes. Recent ...
Machine-learned computer vision algorithms for tagging images are increasingly used by developers an...
Deep learning-based person identification and verification systems have remarkably improved in terms...
© 2013 IEEE. Recent studies have demonstrated that most commercial facial analysis systems are biase...
Within the last years Face Recognition (FR) systems have achieved human-like (or better) performance...
Existing facial analysis systems have been shown to yield biased results against certain demographic...
Rapid progress in automated facial recognition has led to a proliferation of the use of algorithms t...
Face Recognition (FR) is increasingly influencing our lives: we use it to unlock our phones; police ...
Large multimodal deep learning models such as Contrastive Language Image Pretraining (CLIP) have be...
Computer vision models have known performance disparities across attributes such as gender and skin ...
The presence of bias in deep models leads to unfair outcomes for certain demographic subgroups. Rese...
Face image quality assessment (FIQA) attempts to improve face recognition (FR) performance by provid...
This paper reports on the making of an interactive demo to illustrate algorithmic bias in facial rec...
Despite many exciting innovations in computer vision, recent studies reveal a number of risks in exi...
Face quality assessment aims at estimating the utility of a face image for the purpose of recognit...
Face recognition (FR) systems have a growing effect on critical decision-making processes. Recent ...
Machine-learned computer vision algorithms for tagging images are increasingly used by developers an...
Deep learning-based person identification and verification systems have remarkably improved in terms...
© 2013 IEEE. Recent studies have demonstrated that most commercial facial analysis systems are biase...
Within the last years Face Recognition (FR) systems have achieved human-like (or better) performance...
Existing facial analysis systems have been shown to yield biased results against certain demographic...
Rapid progress in automated facial recognition has led to a proliferation of the use of algorithms t...
Face Recognition (FR) is increasingly influencing our lives: we use it to unlock our phones; police ...
Large multimodal deep learning models such as Contrastive Language Image Pretraining (CLIP) have be...
Computer vision models have known performance disparities across attributes such as gender and skin ...
The presence of bias in deep models leads to unfair outcomes for certain demographic subgroups. Rese...
Face image quality assessment (FIQA) attempts to improve face recognition (FR) performance by provid...
This paper reports on the making of an interactive demo to illustrate algorithmic bias in facial rec...
Despite many exciting innovations in computer vision, recent studies reveal a number of risks in exi...
Face quality assessment aims at estimating the utility of a face image for the purpose of recognit...
Face recognition (FR) systems have a growing effect on critical decision-making processes. Recent ...
Machine-learned computer vision algorithms for tagging images are increasingly used by developers an...
Deep learning-based person identification and verification systems have remarkably improved in terms...