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非侵入式连续运动控制脑-机接口技术综述

许敏鹏 贾乐怡 周晓宇 陈恩泽 王俊洋 肖晓琳 明东

许敏鹏, 贾乐怡, 周晓宇, 陈恩泽, 王俊洋, 肖晓琳, 明东. 非侵入式连续运动控制脑-机接口技术综述[J]. 电子与信息学报. doi: 10.11999/JEIT260011
引用本文: 许敏鹏, 贾乐怡, 周晓宇, 陈恩泽, 王俊洋, 肖晓琳, 明东. 非侵入式连续运动控制脑-机接口技术综述[J]. 电子与信息学报. doi: 10.11999/JEIT260011
XU Minpeng, JIA Leyi, ZHOU Xiaoyu, CHEN Enze, WANG Junyang, XIAO Xiaolin, MING Dong. Review of Non-invasive Brain–Computer Interfaces for Continuous Motor Control[J]. Journal of Electronics & Information Technology. doi: 10.11999/JEIT260011
Citation: XU Minpeng, JIA Leyi, ZHOU Xiaoyu, CHEN Enze, WANG Junyang, XIAO Xiaolin, MING Dong. Review of Non-invasive Brain–Computer Interfaces for Continuous Motor Control[J]. Journal of Electronics & Information Technology. doi: 10.11999/JEIT260011

非侵入式连续运动控制脑-机接口技术综述

doi: 10.11999/JEIT260011 cstr: 32379.14.JEIT260011
基金项目: 国家自然科学基金(82330064)
详细信息
    作者简介:

    许敏鹏:男,教授,研究方向为脑机接口

    贾乐怡:女,硕士生,研究方向为脑机接口

    周晓宇:女,博士生,研究方向为脑机接口

    陈恩泽:男,博士生,研究方向为脑机接口

    王俊洋:男,博士生,研究方向为脑机接口

    肖晓琳:女,副教授,研究方向为视觉型脑机接口、高速高维脑操控系统、视觉脑控游戏、临床视功能检测

    明东:男,教授,研究方向为脑机接口

    通讯作者:

    肖晓琳 Email:xiaoxiao0@tju.edu.cn

  • 中图分类号: TP11; R318.0

Review of Non-invasive Brain–Computer Interfaces for Continuous Motor Control

Funds: The National Natural Science Foundation of China (82330064)
  • 摘要: 脑–机接口(BCI)在外部设备运动控制中的应用不断拓展,但以离散指令为主的控制方式难以满足连续控制与自然交互的需求,非侵入式连续运动控制BCI因兼具安全性与可推广性而受到广泛关注。本文系统综述了非侵入式连续运动控制BCI的研究进展,从控制范式、解码方法、应用场景及评价指标等方面进行了综合分析,重点讨论了连续控制实现机制及其对系统性能的影响。综述结果表明,非侵入式连续运动控制BCI已由早期概念验证任务逐步拓展至多类实际应用场景,但在范式优化、解码性能提升、真实场景适配和评价标准完善等方面仍有待进一步发展。本文在此基础上对相关研究进行了归纳总结,并对未来发展方向进行了展望,为非侵入式连续运动控制BCI的进一步研究与应用提供参考。
  • 图  1  非侵入式连续控制流程图

    表  1  连续控制任务中常用的评价指标

    指标类型具体指标
    客观指标成功率[42,6267]、完成时间[28,62,65,66]、轨迹有效率[28,6265]、Fitts’ITR[28]、位置误差[28,62,66,68]
    主观指标NASA量表:心理需求、身体需求、时间需求、绩效水平、努力程度、挫败感[60,62]
    QCM量表:注意力水平、认知困难、精神负担、心理努力、疲惫感、不轻松感、负担感[59]
    自定义问卷:厌烦感、疲劳感、困难程度、喜好、不舒服感、头晕感[28,59,65,69,70]
    下载: 导出CSV
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  • 修回日期:  2026-03-16
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