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EEG-Based BCI Control Schemes for Lower-Limb Assistive-Robots

机译:基于EEG的下肢辅助机器人BCI控制方案

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摘要

Over recent years, brain-computer interface (BCI) has emerged as an alternative communication system between the human brain and an output device. Deciphered intents, after detecting electrical signals from the human scalp, are translated into control commands used to operate external devices, computer displays and virtual objects in the real-time. BCI provides an augmentative communication by creating a muscle-free channel between the brain and the output devices, primarily for subjects having neuromotor disorders, or trauma to nervous system, notably spinal cord injuries (SCI), and subjects with unaffected sensorimotor functions but disarticulated or amputated residual limbs. This review identifies the potentials of electroencephalography (EEG) based BCI applications for locomotion and mobility rehabilitation. Patients could benefit from its advancements such as wearable lower-limb (LL) exoskeletons, orthosis, prosthesis, wheelchairs, and assistive-robot devices. The EEG communication signals employed by the aforementioned applications that also provide feasibility for future development in the field are sensorimotor rhythms (SMR), event-related potentials (ERP) and visual evoked potentials (VEP). The review is an effort to progress the development of user's mental task related to LL for BCI reliability and confidence measures. As a novel contribution, the reviewed BCI control paradigms for wearable LL and assistive-robots are presented by a general control framework fitting in hierarchical layers. It reflects informatic interactions, between the user, the BCI operator, the shared controller, the robotic device and the environment. Each sub layer of the BCI operator is discussed in detail, highlighting the feature extraction, classification and execution methods employed by the various systems. All applications' key features and their interaction with the environment are reviewed for the EEG-based activity mode recognition, and presented in form of a table. It is suggested to structure EEG-BCI controlled LL assistive devices within the presented framework, for future generation of intent-based multifunctional controllers. Despite the development of controllers, for BCI-based wearable or assistive devices that can seamlessly integrate user intent, practical challenges associated with such systems exist and have been discerned, which can be constructive for future developments in the field.
机译:近年来,脑机接口(BCI)已经成为人脑与输出设备之间的替代通信系统。在检测到来自人类头皮的电信号后,破译的意图被转换为用于实时操作外部设备,计算机显示器和虚拟对象的控制命令。 BCI通过在大脑和输出设备之间建立一条无肌肉的通道来提供增强的交流,该通道主要用于患有神经运动障碍或神经系统创伤(特别是脊髓损伤(SCI))的受试者,以及感觉运动功能未受影响但肢体分离或截肢残肢。这篇综述确定了基于脑电图(EEG)的BCI在运动和活动能力恢复中的应用潜力。穿戴式下肢(LL)外骨骼,矫形器,假肢,轮椅和机器人辅助装置等可以使患者受益。前述应用所使用的也为该领域的未来发展提供可行性的EEG通信信号是感觉运动节律(SMR),事件相关电位(ERP)和视觉诱发电位(VEP)。这项审查是为了推进与LL相关的用户心理任务的开发,以实现BCI可靠性和置信度。作为一项新颖的贡献,针对可穿戴式LL和辅助机器人的BCI控制范例已通过适用于层次结构层的通用控制框架进行了介绍。它反映了用户,BCI操作员,共享控制器,机器人设备和环境之间的信息交互。详细讨论了BCI运算符的每个子层,重点介绍了各种系统采用的特征提取,分类和执行方法。审查了所有应用程序的关键功能及其与环境的交互,以识别基于EEG的活动模式,并以表格形式显示。建议在提出的框架内构造EEG-BCI控制的LL辅助设备,以用于下一代基于意图的多功能控制器。尽管开发了控制器,但对于可以无缝集成用户意图的基于BCI的可穿戴或辅助设备,与此类系统相关联的实际挑战仍然存在,并且已经被发现,这可能对该领域的未来发展具有建设性。

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