Puanhvuan Dilok, Khemmachotikun Sarawin, Wechakarn Pongsakorn, Wijarn Boonyanuch, Wongsawat Yodchanan
Department of Biomedical Engineering, Faculty of Engineering, Mahidol Unversity, 25/25, Putthamonthol 4 Road, Salaya, Putthamonthol, Nakhon Pathom 73170 Thailand.
Cogn Neurodyn. 2017 Apr;11(2):117-134. doi: 10.1007/s11571-017-9424-6. Epub 2017 Feb 15.
Currently, electric wheelchairs are commonly used to improve mobility in disabled people. In severe cases, the user is unable to control the wheelchair by themselves because his/her motor functions are disabled. To restore mobility function, a brain-controlled wheelchair (BCW) would be a promising system that would allow the patient to control the wheelchair by their thoughts. P300 is a reliable brain electrical signal, a component of visual event-related potentials (ERPs), that could be used for interpreting user commands. This research aimed to propose a prototype BCW to allowed severe motor disabled patients to practically control a wheelchair for use in their home environment. The users were able to select from 9 possible destination commands in the automatic mode and from 4 directional commands (forward, backward, turn left and right) in the shared-control mode. These commands were selected via the designed P300 processing system. The wheelchair was steered to the desired location by the implemented navigation system. Safety of the user was ensured during wheelchair navigation due to the included obstacle detection and avoidance features. A combination of P300 and EOG was used as a hybrid BCW system. The user could fully operate the system such as enabling P300 detection system, mode shifting and stop/cancelation command by performing a different consecutive blinks to generate eye blinking patterns. The results revealed that the prototype BCW could be operated in either of the proposed modes. With the new design of the LED-based P300 stimulator, the average accuracies of the P300 detection algorithm in the shared-control and automatic modes were 95.31 and 83.42% with 3.09 and 3.79 bits/min, respectively. The P300 classification error was acceptable, as the user could cancel an incorrect command by blinking 2 times. Moreover, the proposed navigation system had a flexible design that could be interfaced with other assistive technologies. This research developed 3 alternative input modules: an eye tracker module and chin and hand controller modules. The user could select the most suitable assistive technology based on his/her level of disability. Other existing assistive technologies could also be connected to the proposed system in the future using the same protocol.
目前,电动轮椅常用于改善残疾人的行动能力。在严重情况下,使用者因运动功能丧失而无法自行控制轮椅。为恢复行动功能,脑控轮椅(BCW)将是一个很有前景的系统,它能让患者通过思维控制轮椅。P300是一种可靠的脑电信号,是视觉事件相关电位(ERP)的一个组成部分,可用于解读用户指令。本研究旨在提出一种BCW原型,使严重运动功能障碍患者能够在家庭环境中实际控制轮椅使用。用户能够在自动模式下从9个可能的目标指令中进行选择,并在共享控制模式下从4个方向指令(前进、后退、左转和右转)中进行选择。这些指令通过设计的P300处理系统进行选择。轮椅由实施的导航系统导向期望的位置。由于具备障碍物检测和避让功能,在轮椅导航过程中确保了用户的安全。P300和EOG的组合被用作混合BCW系统。用户可以通过执行不同的连续眨眼以生成眨眼模式来完全操作该系统,如启用P300检测系统、模式切换以及停止/取消命令。结果表明,BCW原型可以在所提出的任何一种模式下运行。基于LED的P300刺激器的新设计,在共享控制和自动模式下,P300检测算法的平均准确率分别为95.31%和83.42%,信息传输速率分别为3.09和3.79比特/分钟。P300分类错误是可接受的,因为用户可以通过眨眼两次取消错误指令。此外,所提出的导航系统设计灵活,可与其他辅助技术对接。本研究开发了3种替代输入模块:一个眼动追踪器模块以及下巴和手部控制器模块。用户可以根据自身残疾程度选择最合适的辅助技术。未来,其他现有的辅助技术也可以使用相同协议连接到所提出的系统。