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Gaze Estimation with an Ensemble of Four Architectures

5 July 2021
Xin Cai
Boyu Chen
Jiabei Zeng
Jiajun Zhang
Yunjia Sun
X. Wang
Zhilong Ji
Xiao-Chang Liu
Xilin Chen
Shiguang Shan
    CVBM
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Abstract

This paper presents a method for gaze estimation according to face images. We train several gaze estimators adopting four different network architectures, including an architecture designed for gaze estimation (i.e.,iTracker-MHSA) and three originally designed for general computer vision tasks(i.e., BoTNet, HRNet, ResNeSt). Then, we select the best six estimators and ensemble their predictions through a linear combination. The method ranks the first on the leader-board of ETH-XGaze Competition, achieving an average angular error of 3.11∘3.11^{\circ}3.11∘ on the ETH-XGaze test set.

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