计算机科学
脑电图
无线
轮椅
接口(物质)
数码产品
脑-机接口
频道(广播)
人工智能
模拟
计算机硬件
工程类
电气工程
电信
神经科学
生物
最大气泡压力法
万维网
气泡
并行计算
作者
Musa Mahmood,Deogratias Mzurikwao,Yun‐Soung Kim,Yong-Kuk Lee,Saswat Mishra,Robert Herbert,Audrey Duarte,Chee Siang Ang,Woon‐Hong Yeo
标识
DOI:10.1038/s42256-019-0091-7
摘要
Variation in human brains creates difficulty in implementing electroencephalography into universal brain–machine interfaces. Conventional electroencephalography systems typically suffer from motion artefacts, extensive preparation time and bulky equipment, while existing electroencephalography classification methods require training on a per-subject or per-session basis. Here, we introduce a fully portable, wireless, flexible scalp electronic system, incorporating a set of dry electrodes and a flexible membrane circuit. Time-domain analysis using convolutional neural networks allows for accurate, real-time classification of steady-state visually evoked potentials in the occipital lobe. Compared to commercial systems, the flexible electronics show the improved performance in detection of evoked potentials due to significant reduction of noise and electromagnetic interference. The two-channel scalp electronic system achieves a high information transfer rate (122.1 ± 3.53 bits per minute) with six human subjects, allowing for wireless, real-time, universal electroencephalography classification for an electric wheelchair, a motorized vehicle and a keyboard-less presentation. Brain–machine interfaces using steady-state visually evoked potentials (SSVEPs) show promise in therapeutic applications. With a combination of innovations in flexible and soft electronics and in deep learning approaches to classify potentials from two channels and from any subject, a compact, wireless and universal SSVEP interface is designed. Subjects can operate a wheelchair in real time with eye movements while wearing the new brain–machine interface.
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