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Decoding Movement Imagination and Execution From Eeg Signals Using Bci-Transfer Learning Method Based on Relation Network

机译:基于关系网络的Bci转移学习方法对脑电信号的运动想象和执行进行解码

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A brain-computer interface (BCI) is used to control external devices for healthy people as well as to rehabilitate motor functions for motor-disabled patients. Decoding movement intention is one of the most significant aspects for performing arm movement tasks using brain signals. Decoding movement execution (ME) from electroencephalogram (EEG) signals have shown high performance in previous works, however movement imagination (MI) paradigm-based intention decoding has so far failed to achieve sufficient accuracy. In this study, we focused on a robust MI decoding method with transfer learning for the ME and MI paradigm. We acquired EEG data related to arm reaching for 3D directions. We proposed a BCI-transfer learning method based on a Relation network (BTRN) architecture. Decoding performances showed the highest performance compared to conventional works. We confirmed the possibility of the BTRN architecture to contribute to continuous decoding of MI using ME datasets.
机译:脑机接口(BCI)用于控制健康人的外部设备以及恢复运动障碍患者的运动功能。解码运动意图是使用脑信号执行手臂运动任务的最重要方面之一。从脑电图(EEG)信号对运动执行(ME)进行解码在以前的工作中已显示出高性能,但是到目前为止,基于运动想象力(MI)范式的意图解码未能获得足够的准确性。在这项研究中,我们专注于一种健壮的MI解码方法,该方法具有针对ME和MI范例的转移学习。我们获取了与手臂伸向3D方向有关的EEG数据。我们提出了一种基于关系网络(BTRN)架构的BCI转移学习方法。与传统作品相比,解码性能表现出最高的性能。我们确认了BTRN体系结构有助于使用ME数据集对MI进行连续解码的可能性。

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