Recently, practical brain-computer interface is actively carried out, especially, in an ambulatory environment. However, the electroencephalography (EEG) signals are distorted by movement artifacts and electromyography signals when users are moving, which make hard to recognize human intention. In addition, as hardware issues are also challenging, ear-EEG has been developed for practical brain-computer interface and has been widely used. In this paper, we proposed ensemble-based convolutional neural networks in ambulatory environment and analyzed the visual event-related potential responses in scalp- and ear-EEG in terms of statistical analysis and brain-computer interface performance. The brain-computer interface performance deteriorated as 3-14% when walking fast at 1.6 m/s. The proposed methods showed 0.728 in average of the area under the curve. The proposed method shows robust to the ambulatory environment and imbalanced data as well.
翻译:最近,特别是在流动环境中,正在积极进行实用的脑-计算机接口,然而,电子脑学信号在用户移动时被移动的手工艺品和电传信号扭曲,难以识别人的意图;此外,由于硬件问题也具有挑战性,为实用的脑-计算机接口开发了耳耳-电子小组,并被广泛使用;在本文件中,我们提议在流动环境中建立基于共同的动态神经网络,并分析在统计分析和脑-计算机界面性能方面头皮和耳耳耳耳脑神经网络与视觉事件有关的潜在反应;在快速行走时,脑-计算机接口性能在1.6米/秒/秒时恶化到3-14个百分点;拟议方法显示曲线下的平均面积为0.728;拟议方法显示震动环境的坚固性和数据不平衡性。