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Sequential Transfer Learning via Segment After Cue Enhances the Motor Imagery-based Brain-Computer Interface

机译:Cue后通过段进行顺序转移,增强了基于电机图像的脑电脑界面

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Brain-computer interface (BCI) based on electroencephalogram (EEG) is a promising technology, allowing computers to estimate human intentions. Intention recognition tool such as motor imagery (MI) with high reliability is one of the major challenges in the BCI field. Recently, researchers have attempted to use transfer learning for various BCI datasets, but the studies showed low classification accuracy. This study aimed to increase the classification accuracy of the MI through sequential transfer learning for a single dataset. EEG-MI data with 9 subjects from the dataset 2a of BCI competition IV were used. EEGNet was used for MI classification. The pre-trained model was constructed by first learning whether the data were MI or not. The model was then sequentially fine-tuned through transfer learning for four MI tasks (i.e., left hand, right hand, both feet and tongue). The model was able to classify MI with 91.34% accuracy. In the meantime, the baseline model without transfer learning showed an accuracy of 61.62%, whereas the fine-tuned model presented an improved accuracy of 63.82%. Consequently, the sequential transfer learning was able to improve the performance of MI-BCI.
机译:基于脑电图(EEG)的大脑 - 计算机接口(BCI)是一个有前途的技术,允许计算机估计人类的意图。意图识别工具,如高可靠性的电动机图像(MI)是BCI领域的主要挑战之一。最近,研究人员试图对各种BCI数据集使用转移学习,但研究表明较低的分类准确性。本研究旨在通过单个数据集的顺序传输学习来提高MI的分类准确性。使用来自BCI竞赛IV的数据集2a的9个受试者的EEG-MI数据。 EEGNET用于MI分类。通过首先学习数据是否为MI来构建预先训练的模型。然后通过对四个MI任务的转移学习顺序微调该模型(即,左手,右手,双脚和舌头)。该模型能够对MI进行分类,精度为91.34%。与此同时,无转移学习的基线模型显示出61.62%的准确性,而微调模型提高了63.82%的精度。因此,顺序转移学习能够提高MI-BCI的性能。

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