Unconstrained Face Detection and Open-Set Face Recognition Challenge
Abstract
Face detection and recognition benchmarks have shifted toward more difficult environments. The challenge presented in this paper addresses the next step in the direction of automatic detection and identification of people from outdoor surveillance cameras. While face detection has shown remarkable success in images collected from the web, surveillance cameras include more diverse occlusions, poses, weather conditions and image blur. Although face verification or closed-set face identification have surpassed human capabilities on some datasets, open-set identification is much more complex as it needs to reject both unknown identities and false accepts from the face detector. We show that unconstrained face detection can approach high detection rates albeit with moderate false accept rates. By contrast, open-set face recognition is currently weak and requires much more attention.
BibTeX
@conference{Gunther-2017-121174,author = {Manuel Günther and Peiyun Hu and Christian Herrmann and Chi Ho Chan and Min Jiang and Shufan Yang and Akshay Raj Dhamija and Deva Ramanan and Jürgen Beyerer and Josef Kittler and Mohamad Al Jazaery and Mohammad Iqbal Nouyed and Guodong Guo and Cezary Stankiewicz and Terrance E. Boult},
title = {Unconstrained Face Detection and Open-Set Face Recognition Challenge},
booktitle = {Proceedings of IEEE International Joint Conference on Biometrics (IJCB '17)},
year = {2017},
month = {October},
pages = {697 - 706},
}