Hodam Kim, Ju Hyeon Kim, Yoon Jae Lee, Jimin Lee, Hyojeong Han, Hoon Yi, Hyeonseok Kim, Hojoong Kim, Tae Woog Kang, Suyeong Chung, Seunghyeb Ban, Byeongjun Lee, Haran Lee, Chang-Hwan Im, Seong J. Cho, Jung Woo Sohn, Ki Jun Yu, Tae June Kang, Woon-Hong Yeo
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引用次数: 0
摘要
利用脑电图进行双向人机交流的现代脑机接口(BCI)面临着运动带来的巨大限制--脆弱的刚性传感器、不一致的皮肤电极阻抗以及笨重的电子设备,这些都降低了系统的持续使用性和便携性。在这里,我们在发丝间引入了运动伪影控制的微脑传感器,实现了皮肤接触的超低阻抗密度,从而实现了可长期使用的、具有增强现实(AR)功能的持续性生物识别(BCI)。使用高导电性聚合物的低调微结构电极阵列可无缝插入毛囊之间的空间,在保持最低接触阻抗密度(0.03 kΩ-cm -2)的同时,提供长达12小时的高保真神经信号捕捉。所实现的无线生物识别(BCI)可检测稳态视觉诱发电位,即使在受试者过度运动(包括站立、行走和跑步)的情况下,其免训练算法的信号分类准确率也能达到 96.4%。一个演示捕捉到了这一系统的能力,展示了基于 AR 的视频通话,利用大脑信号进行免提控制,改变了数字通信。总之,这项研究凸显了集成传感器和柔性电子技术在推动生物识别(BCI)应用于交互式数字环境中的关键作用。
Motion artifact–controlled micro–brain sensors between hair follicles for persistent augmented reality brain–computer interfaces
Modern brain–computer interfaces (BCI), utilizing electroencephalograms for bidirectional human–machine communication, face significant limitations from movement-vulnerable rigid sensors, inconsistent skin–electrode impedance, and bulky electronics, diminishing the system’s continuous use and portability. Here, we introduce motion artifact–controlled micro–brain sensors between hair strands, enabling ultralow impedance density on skin contact for long-term usable, persistent BCI with augmented reality (AR). An array of low-profile microstructured electrodes with a highly conductive polymer is seamlessly inserted into the space between hair follicles, offering high-fidelity neural signal capture for up to 12 h while maintaining the lowest contact impedance density (0.03 kΩ·cm −2 ) among reported articles. Implemented wireless BCI, detecting steady-state visually evoked potentials, offers 96.4% accuracy in signal classification with a train-free algorithm even during the subject’s excessive motions, including standing, walking, and running. A demonstration captures this system’s capability, showing AR-based video calling with hands-free controls using brain signals, transforming digital communication. Collectively, this research highlights the pivotal role of integrated sensors and flexible electronics technology in advancing BCI’s applications for interactive digital environments.
期刊介绍:
The Proceedings of the National Academy of Sciences (PNAS), a peer-reviewed journal of the National Academy of Sciences (NAS), serves as an authoritative source for high-impact, original research across the biological, physical, and social sciences. With a global scope, the journal welcomes submissions from researchers worldwide, making it an inclusive platform for advancing scientific knowledge.