This work is supported from a National Science Foundation (NSF) SaTC Award #2129173 on Probing Fairness of Ocular Biometrics Methods Across Demographic Variations
Code available for all publications at Here
This page features condensed results of all the analysis that was done. Introduction Fairness evaluation studies across Biometric Modalities Fairness in Face Recognition Ocular : Motivation Research Objectives Covariates to be Studied Datasets Used Gender Classification Updates to Training Across Model - VIS Across Model - NIR Across Model - NIR (Cross Dataset) Across Databalance - VIS Across Databalance - NIR Across Race - VIS Across Age - VIS Across Modality - VIS Across Modality - NIR Across Device - VIS Across Lighting - VIS Across Spectrum Subject Verification Across Model - VIS Across Model - NIR Across Databalance - VIS Across Databalance - NIR Across Race - VIS Across Modality - VIS Across Modality - NIR Across Device - VIS Across Lighting - VIS Across Spectrum Summary
Dataset Gender Classification Results Subject Verification Results Subject Verification All Results Table Visualizations GradCAM GradCAM Guided GradCAM Guided GradCAM Occlusion Sensitivity Occlusion Sensitivity Vanilla Gradients Vanilla Gradients Integrated Gradients Integrated Gradients SmoothGrad -- Gradients x Input Gradients x Input Averaged Map × References Bibliography called, but no references