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Trajectory Decoding of Arm Reaching Movement Imageries for Brain-Controlled Robot Arm System

机译:臂轨道解码臂控制机器人臂系统的手臂伸展仪

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Development of noninvasive brain-machine interface (BMI) systems based on electroencephalography (EEG), driven by spontaneous movement intentions, is a useful tool for controlling external devices or supporting a neuro- rehabilitation. In this study, we present the possibility of brain-controlled robot arm system using arm trajectory decoding. To do that, we first constructed the experimental system that can acquire the EEG data for not only movement execution (ME) task but also movement imagery (MI) tasks. Five subjects participated in our experiments and performed four directional reaching tasks (Left, right, forward, and backward) in the 3D plane. For robust arm trajectory decoding, we propose a subject-dependent deep neural network (DNN) architecture. The decoding model applies the principle of bi-directional long short-term memory (LSTM) network. As a result, we confirmed the decoding performance (r-value: >0.8) for all X-, Y-, and Z-axis across all subjects in the MI as well as ME tasks. These results show the feasibility of the EEG-based intuitive robot arm control system for high-level tasks (e.g., drink water or moving some objects). Also, we confirm that the proposed method has no much decoding performance variations between ME and MI tasks for the offline analysis. Hence, we will demonstrate that the decoding model is capable of robust trajectory decoding even in a real-time environment.
机译:基于脑电图(EEG)的非血管脑机接口(BMI)系统的开发由自发运动意图驱动,是一种用于控制外部器件或支持神经恢复的有用工具。在这项研究中,我们展示了使用臂轨迹解码的脑控制机器人臂系统的可能性。为此,我们首先构建了可以获取EEG数据的实验系统,不仅是运动执行(ME)任务,还可以进行移动图像(MI)任务。五个受试者参加了我们的实验,并在3D平面上进行了四个方向达到任务(左,右,前进和后退)。对于强大的臂轨迹解码,我们提出了一个受试者依赖性深神经网络(DNN)架构。解码模型应用双向长短期存储器(LSTM)网络的原理。因此,我们在MI中的所有X-,Y和Z轴上确认了所有X-,Y和Z轴的解码性能(R值:> 0.8)以及我的任务。这些结果表明,基于EEG的直观机器人臂控制系统的可行性,用于高级任务(例如,饮用水或移动一些物体)。此外,我们确认所提出的方法在离线分析中没有多少解码ME和MI任务之间的性能变化。因此,我们将展示解码模型即使在实时环境中也能够稳健的轨迹解码。

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