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A Coarse-to-Fine Adaptive Network for Appearance-Based Gaze Estimation

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Human gaze is essential for various appealing applications. Aiming at more accurate gaze estimation, a series of recent works propose to utilize face and eye images simultaneously. Nevertheless, face and eye images only serve as independent or parallel feature sources in those works, the intrinsic correlation between their features is overlooked. In this paper we make the following contributions: 1) We propose a coarse-to-fine strategy which estimates a basic gaze direction from face image and refines it with corresponding residual predicted from eye images. 2) Guided by the proposed strategy, we design a framework which introduces a bi-gram model to bridge gaze residual and basic gaze direction, and an attention component to adaptively acquire suitable fine-grained feature. 3) Integrating the above innovations, we construct a coarse-to-fine adaptive network named CA-Net and achieve state-of-the-art performances on MPIIGaze and EyeDiap.

Yihua Cheng, Shiyao Huang, Fei Wang, Chen Qian, Feng Lu• 2020

Related benchmarks

TaskDatasetResultRank
Gaze EstimationGaze360 (test)
MAE (All 360°)11.2
60
Gaze EstimationMPIIFaceGaze
Angular Error (degrees)4.27
56
Gaze EstimationGaze360
Angular Error11.2
32
Gaze EstimationMPIIFaceGaze (leave-one-subject-out)
Mean Angular Error4.1
28
Gaze EstimationETH-XGaze
GE Error (degrees)5.27
22
Gaze EstimationEYEDIAP
Angular Error5.27
19
Gaze EstimationDG -> DM
Gaze Error27.13
15
Gaze EstimationDG -> DD
Gaze Error31.41
15
Gaze EstimationGaze360 -> MPIIFaceGaze
Angular Error27.13
14
Gaze EstimationGaze360 -> ETH-XGaze
GE Error31.41
14
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