[HTML][HTML] FRCSyn-onGoing: Benchmarking and comprehensive evaluation of real and synthetic data to improve face recognition systems
This article presents FRCSyn-onGoing, an ongoing challenge for face recognition where
researchers can easily benchmark their systems against the state of the art in an open …
researchers can easily benchmark their systems against the state of the art in an open …
Synthetic data for the mitigation of demographic biases in face recognition
This study investigates the possibility of mitigating the demographic biases that affect face
recognition technologies through the use of synthetic data. Demographic biases have the …
recognition technologies through the use of synthetic data. Demographic biases have the …
Rethinking bias mitigation: Fairer architectures make for fairer face recognition
Face recognition systems are widely deployed in safety-critical applications, including law
enforcement, yet they exhibit bias across a range of socio-demographic dimensions, such as …
enforcement, yet they exhibit bias across a range of socio-demographic dimensions, such as …
Statistical challenges with dataset construction: Why you will never have enough images
Deep neural networks have achieved impressive performance on many computer vision
benchmarks in recent years. However, can we be confident that impressive performance on …
benchmarks in recent years. However, can we be confident that impressive performance on …
Fairer and more accurate tabular models through nas
Making models algorithmically fairer in tabular data has been long studied, with techniques
typically oriented towards fixes which usually take a neural model with an undesirable …
typically oriented towards fixes which usually take a neural model with an undesirable …
Mitigating Demographic Bias in Face Recognition via Regularized Score Calibration
Demographic bias in deep learning-based face recognition systems has led to serious
concerns. Several existing works attempt to mitigate bias by incorporating demographic …
concerns. Several existing works attempt to mitigate bias by incorporating demographic …
Demographic fairness transformer for bias mitigation in face recognition
Demographic bias in deep learning-based face recognition systems has led to serious
concerns. Often, the biased nature of models is attributed to severely imbalanced datasets …
concerns. Often, the biased nature of models is attributed to severely imbalanced datasets …
Fairness properties of face recognition and obfuscation systems
The proliferation of automated face recognition in the commercial and government sectors
has caused significant privacy concerns for individuals. One approach to address these …
has caused significant privacy concerns for individuals. One approach to address these …
More than the Sum of its Parts: Susceptibility to Algorithmic Disadvantage as a Conceptual Framework
P Lopez - The 2024 ACM Conference on Fairness, Accountability …, 2024 - dl.acm.org
Algorithmic systems are increasingly being applied in contexts of state action to, in some
capacity, mediate the relations between state and individual. Disadvantageous effects, such …
capacity, mediate the relations between state and individual. Disadvantageous effects, such …
Exploring Fairness-Accuracy Trade-Offs in Binary Classification: A Comparative Analysis Using Modified Loss Functions
C Trotter, Y Chen - Proceedings of the 2024 ACM Southeast Conference, 2024 - dl.acm.org
In this paper, we explore the trade-off between fairness and accuracy when data is biased
and unbiased. We introduce two versions of a modified loss function: Group Equity and …
and unbiased. We introduce two versions of a modified loss function: Group Equity and …