解码方法
前庭电刺激
脑-机接口
计算机科学
频道(广播)
神经解码
任务(项目管理)
语音识别
人工智能
模式识别(心理学)
算法
前庭系统
听力学
心理学
电信
医学
脑电图
精神科
经济
管理
作者
Yuxi Shi,Gowrishankar Ganesh,Hideyuki Ando,Yasuharu Koike,Eiichi Yoshida,Natsue Yoshimura
标识
DOI:10.1142/s0129065721500349
摘要
A significant problem in brain-computer interface (BCI) research is decoding - obtaining required information from very weak noisy electroencephalograph signals and extracting considerable information from limited data. Traditional intention decoding methods, which obtain information from induced or spontaneous brain activity, have shortcomings in terms of performance, computational expense and usage burden. Here, a new methodology called prediction error decoding was used for motor imagery (MI) detection and compared with direct intention decoding. Galvanic vestibular stimulation (GVS) was used to induce subliminal sensory feedback between the forehead and mastoids without any burden. Prediction errors were generated between the GVS-induced sensory feedback and the MI direction. The corresponding prediction error decoding of the front/back MI task was validated. A test decoding accuracy of 77.83-78.86% (median) was achieved during GVS for every 100[Formula: see text]ms interval. A nonzero weight parameter-based channel screening (WPS) method was proposed to select channels individually and commonly during GVS. When the WPS common-selected mode was compared with the WPS individual-selected mode and a classical channel selection method based on correlation coefficients (CCS), a satisfactory decoding performance of the selected channels was observed. The results indicated the positive impact of measuring common specific channels of the BCI.
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