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Grand Challenge of 106-Point Facial Landmark Localization

Authors :
Liu, Yinglu
Shen, Hao
Si, Yue
Wang, Xiaobo
Zhu, Xiangyu
Shi, Hailin
Hong, Zhibin
Guo, Hanqi
Guo, Ziyuan
Chen, Yanqin
Li, Bi
Xi, Teng
Yu, Jun
Xie, Haonian
Xie, Guochen
Li, Mengyan
Lu, Qing
Wang, Zengfu
Lai, Shenqi
Chai, Zhenhua
Wei, Xiaoming
Publication Year :
2019

Abstract

Facial landmark localization is a very crucial step in numerous face related applications, such as face recognition, facial pose estimation, face image synthesis, etc. However, previous competitions on facial landmark localization (i.e., the 300-W, 300-VW and Menpo challenges) aim to predict 68-point landmarks, which are incompetent to depict the structure of facial components. In order to overcome this problem, we construct a challenging dataset, named JD-landmark. Each image is manually annotated with 106-point landmarks. This dataset covers large variations on pose and expression, which brings a lot of difficulties to predict accurate landmarks. We hold a 106-point facial landmark localization competition1 on this dataset in conjunction with IEEE International Conference on Multimedia and Expo (ICME) 2019. The purpose of this competition is to discover effective and robust facial landmark localization approaches.<br />Comment: This paper is accepted at ICME2019 Grand Challenge. The JD-landmark dataset has been released and can be downloaded from https://sites.google.com/view/hailin-shi

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1905.03469
Document Type :
Working Paper