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通过探索双眼不对称性进行注视估计

Gaze Estimation by Exploring Two-Eye Asymmetry.

作者信息

Cheng Yihua, Zhang Xucong, Lu Feng, Lu Feng, Sato Yoichi

出版信息

IEEE Trans Image Process. 2020 Mar 30. doi: 10.1109/TIP.2020.2982828.

Abstract

Eye gaze estimation is increasingly demanded by recent intelligent systems to facilitate a range of interactive applications. Unfortunately, learning the highly complicated regression from a single eye image to the gaze direction is not trivial. Thus, the problem is yet to be solved efficiently. Inspired by the two-eye asymmetry as two eyes of the same person may appear uneven, we propose the face-based asymmetric regression-evaluation network (FARE-Net) to optimize the gaze estimation results by considering the difference between left and right eyes. The proposed method includes one face-based asymmetric regression network (FAR-Net) and one evaluation network (E-Net). The FAR-Net predicts 3D gaze directions for both eyes and is trained with the asymmetric mechanism, which asymmetrically weights and sums the loss generated by two-eye gaze directions. With the asymmetric mechanism, the FAR-Net utilizes the eyes that can achieve high performance to optimize network. The E-Net learns the reliabilities of two eyes to balance the learning of the asymmetric mechanism and symmetric mechanism. Our FARENet achieves leading performances on MPIIGaze, EyeDiap and RT-Gene datasets. Additionally, we investigate the effectiveness of FARE-Net by analyzing the distribution of errors and ablation study.

摘要

近期的智能系统对眼动估计的需求日益增长,以促进一系列交互应用。不幸的是,从单眼图像学习到注视方向的高度复杂回归并非易事。因此,该问题尚未得到有效解决。受同一人的双眼可能出现不对称这一两眼不对称现象的启发,我们提出了基于面部的不对称回归评估网络(FARE-Net),通过考虑左右眼之间的差异来优化眼动估计结果。所提出的方法包括一个基于面部的不对称回归网络(FAR-Net)和一个评估网络(E-Net)。FAR-Net预测双眼的3D注视方向,并采用不对称机制进行训练,该机制对两眼注视方向产生的损失进行不对称加权和求和。通过不对称机制,FAR-Net利用能够实现高性能的眼睛来优化网络。E-Net学习两眼的可靠性,以平衡不对称机制和对称机制的学习。我们的FARENet在MPIIGaze、EyeDiap和RT-Gene数据集上取得了领先性能。此外,我们通过分析误差分布和消融研究来研究FARE-Net的有效性。

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