Perspective and the Use of Eye Tracking in Human-Computer Interaction
DOI:
https://doi.org/10.54097/hset.v39i.6581Keywords:
Eye Tracking; Human-Computer Interaction; Gaze Tracking.Abstract
With the increasing demand for information technology, the traditional human-computer interaction (HCI) mode using keyboard and mouse cannot meet the need, which has inspired the research of multi-channel interface based on new interaction technologies such as eye tracking. The direction of human eye contains the information of current task status, so eye gaze is one of the convenient input channels for HCI. To make eye tracking technology more comprehensive and widely used, it is constantly improved. With the development of eye tracking technology, it has been scientifically explored in HCI to record eye movements. The main purpose of this paper is to summarize the update of eye tracking technology currently used for HCI, summarize the development direction and shortcomings of the current technology, and help new researchers to study various methods and algorithms of eye tracking. This paper will briefly introduce the eye tracking technology, summarizes the current application of eye tracking technology in HCI, and discusses the future direction.
Downloads
References
Rupali S. Parte, Gaus Mundkar, Nanasaheb Karande, et al. A Survey on Eye Tracking and Detection. International Journal of Innovative Research in Science, Engineering and Technology, 2015, 4:10.
Minrui Zhao, et al. Research on Human-Computer Interaction Intention Recognition Based on EEG and Eye Movement. IEEE Access, 2020, 8.
Rajakumari. B, Senthamarai Selvi. N. HCI and Eye Tracking: Emotion Recognition Using Hidden Markov Mode. International Journal of Computer Science & Engineering Technology, 2015, 6:03.
Chahat Sharma, Dr. Sankay Kumar Dubey. Analysis of Eye Tracking Techniques in Usability and HCI Perspective. International Journal of Innovative Research in Science, Engineering and Technology, 2014, 978-993.
Mohammadali Azimi Kashani, Mahdi MollaeiArani, Mohammad Reza Ramezanpour, Eye Detection and Tracking in Image with Complex Background, IEEE April 2011.
Anamika Mali, et al. Optimal System for Manipulating Mouse Pointer through Eyes. International Research Journal of Engineering and Technology, 2016, 03:03.
Zhang X Y, Kulkarni H, Morris M R. Smartphone-based gaze gesture communication for people with motor disabilities. Proceedings of the 2017 CHI Conference on Human Factors in Computing Systems. Denver Colorado USA, New York, NY, USA, ACM, 2017, 2878-2889.
Shiwei Cheng, Qiufeng Ping, et al. EasyGaze: Hybrid eye tracking approach for handheld mobile devices. Virtual Reality & Intelligent Hardware, 2022, 4(2):173-188.
Zhiwei Zhu, Qiang Ji. Eye and gaze tracking for interactive graphic display. Machine Vision and Applications. Machine Vision and Applications, 2014, 15:139-148.
Park, U. Mallipeddi, R. and Lee, M. Human implicit intent discrimination using EEG and eye movement. BMC Neurosci., 2019, 17(54):1-18.
Shih, J. J. Krusienski, D. J. and Wolpaw, J. R. Brain-computer inter- faces in medicine. Mayo Clinic Proc., 2012, 87(3):268-279.
Wang, Y. and Sparks, B. A. An eye-tracking study of tourism photo stimuli: Image characteristics and ethnicity. J. Travel Res., 2016, 55(5):588-602.
Downloads
Published
Issue
Section
License

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.







