Abstract
While biases such as gender, race, and age have been closely examined in biometric recognition, especially in face and fingerprint traits, their exploration in gait-based recognition is lacking, except for one study. We formulate conditional-matched bootstrap analysis to control for confounding covariates like clothing style, height, and walking speed. The goal is to isolate genuine gender effects on gait recognition. We delve into gender-based disparities in gait recognition by using several state-of-the-art gait recognition methodologies - GaitSet, GaitPart, and GaitGL. For our analysis, the widely-referenced OU-MVLP dataset served as our foundation, which we enhanced with annotations about clothing style, body height, and walking speed. The results were illuminating. We observed a disparity in recognition performance across genders on the original dataset, with recognition for females higher than for males. However, after controlling for covariate distributions using conditional-matched bootstrap analysis, the gap was reduced, with clothing type emerging as the most significant contributor. Code available at https://github.com/azimIbragimov/gait-gender
Video Presentation.
This research was presented at the IEEE Conference on on Automatic Face and Gesture Recognition 2024 (IEEE FG 2024), held in Istanbul, Turkey. The accompanying video presentation provides an overview of the methodology, results, and key contributions of this work.
More Resources
For those interested in a deeper engagement with this work, the full paper and project codebase are both publicly accessible below. The paper offers a rigorous treatment of the problem, methodology, and experimental findings, and the codebase is open-source and available for use, adaptation, and further research by the broader community.