Title: EEG-based Motion Sickness Classification system with Genetic Feature Selection
Authors: Ko, Li-Wei
Lee, Hua-Chin
Tsai, Shu-Fang
Shih, Tsung-Chin
Chuang, Ya-Ting
Huang, Hui-Ling
Ho, Shinn-Ying
Lin, Chin-Teng
生物科技學系
Department of Biological Science and Technology
Issue Date: 2013
Abstract: People tend to get motion sickness on a moving boat, train, airplane, car, or amusement park rides. Many previous studies indicated that motion sickness sometimes led to traffic accidents, so it becomes an important issue in our daily life. In this study, we designed a VIZ-based motion-sickness platform with a 32-channel EEG system and a joystick which is used to report the motion sickness level (MSL) in real time during experiments. The results show it is feasible to estimate subject's MSL based on re-sampling frequency band proved by the high test accuracy. A comparison between general prediction models (such as LDA, QDA, KNN) and IBCGA shows that the IBCGA can be effectively increase the accuracy. In this paper, an extended-IBCGA (e-IBCGA) is proposed and it provides more accuracy than the prior-art research. The test results show that e-IBCGA increases at least 10% to 20% test accuracy in 6 subjects.
URI: http://hdl.handle.net/11536/24089
ISBN: 978-1-4673-5871-2
Journal: 2013 IEEE SYMPOSIUM ON COMPUTATIONAL INTELLIGENCE, COGNITIVE ALGORITHMS, MIND, AND BRAIN (CCMB)
Begin Page: 158
End Page: 164
Appears in Collections:Conferences Paper