Watchlist Challenge: 3rd Open-set Face Detection and Identification
Abstract
In the current landscape of biometrics and surveillance, the ability to accurately recognize faces in uncontrolled settings is paramount. The Watchlist Challenge addresses this critical need by focusing on face detection and open-set identification in real-world surveillance scenarios. This paper presents a comprehensive evaluation of participating algorithms, using the enhanced UnConstrained College Students (UCCS) dataset with new evaluation protocols. In total, four participants submitted four face detection and nine open-set face recognition systems. The evaluation demonstrates that while detection capabilities are generally robust, closed-set identification performance varies significantly, with models pre-trained on large-scale datasets showing superior performance. However, open-set scenarios require further improvement, especially at higher true positive identification rates, i.e., lower thresholds.
Cite
@article{arxiv.2409.07220,
title = {Watchlist Challenge: 3rd Open-set Face Detection and Identification},
author = {Furkan Kasım and Terrance E. Boult and Rensso Mora and Bernardo Biesseck and Rafael Ribeiro and Jan Schlueter and Tomáš Repák and Rafael Henrique Vareto and David Menotti and William Robson Schwartz and Manuel Günther},
journal= {arXiv preprint arXiv:2409.07220},
year = {2024}
}
Comments
Accepted for presentation at IJCB 2024