DocumentCode
248936
Title
Hierarchical gaze estimation based on adaptive feature learning
Author
Xiying Wang ; Kang Xue ; Dongkyung Nam ; Jaejoon Han ; Haitao Wang
Author_Institution
Samsung R&D Inst. China, Beijing, China
fYear
2014
fDate
27-30 Oct. 2014
Firstpage
3347
Lastpage
3351
Abstract
Existing appearance-based gaze estimation methods suffer from tedious calibration and appearance variation caused by head movement. In this paper, to handle this problem, we propose a novel appearance-based gaze estimation method by introducing supervised adaptive feature extraction and hierarchical mapping model. Firstly, an adaptive feature learning method is proposed to extract topology-preserving (TOP) feature individually. Then hierarchical mapping method is proposed to localize gaze position based on coarse-to-fine strategy. Appearance synthesis approach is used to increase the refer sample density. Experiments show that under the condition of sparse calibration, proposed method has better performance in accuracy than existing methods under fixed head pose without chinrest. Moreover, our method can be easily extended for head pose-varying gaze estimation.
Keywords
feature extraction; gaze tracking; learning (artificial intelligence); pose estimation; topology; TOP feature; adaptive feature learning method; appearance synthesis approach; coarse-to-fine strategy; gaze estimation methods; head movement; hierarchical gaze estimation; hierarchical mapping model; sparse calibration; supervised adaptive feature extraction; topology preserving extraction; Calibration; Estimation; Feature extraction; Head; Interpolation; Optical imaging; Training; appearance synthesis; feature learning; gaze estimation; hierarchical mapping;
fLanguage
English
Publisher
ieee
Conference_Titel
Image Processing (ICIP), 2014 IEEE International Conference on
Conference_Location
Paris
Type
conf
DOI
10.1109/ICIP.2014.7025677
Filename
7025677
Link To Document