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Adaptive Feature Fusion Network for Gaze Tracking in Mobile Tablets

2021-03-20 07:16:10
Yiwei Bao, Yihua Cheng, Yunfei Liu, Feng Lu

Abstract

Recently, many multi-stream gaze estimation methods have been proposed. They estimate gaze from eye and face appearances and achieve reasonable accuracy. However, most of the methods simply concatenate the features extracted from eye and face appearance. The feature fusion process has been ignored. In this paper, we propose a novel Adaptive Feature Fusion Network (AFF-Net), which performs gaze tracking task in mobile tablets. We stack two-eye feature maps and utilize Squeeze-and-Excitation layers to adaptively fuse two-eye features according to their similarity on appearance. Meanwhile, we also propose Adaptive Group Normalization to recalibrate eye features with the guidance of facial feature. Extensive experiments on both GazeCapture and MPIIFaceGaze datasets demonstrate consistently superior performance of the proposed method.

Abstract (translated)

URL

https://arxiv.org/abs/2103.11119

PDF

https://arxiv.org/pdf/2103.11119


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