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A Dense Long Short-Term Memory Model for Enhancing the Imagery-Based Brain-Computer Interface

机译:一种用于增强基于图像的脑电脑界面的密集长期内存模型

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Imagery-based brain-computer interfaces (BCIs) aim to decode different neural activities into control signals by identifying and classifying various natural commands from electroencephalogram (EEG) patterns and then control corresponding equipment. However, several traditional BCI recognition algorithms have the “one person, one model” issue, where the convergence of the recognition model’s training process is complicated. In this study, a new BCI model with a Dense long short-term memory (Dense-LSTM) algorithm is proposed, which combines the event-related desynchronization (ERD) and the event-related synchronization (ERS) of the imagery-based BCI; model training and testing were conducted with its own data set. Furthermore, a new experimental platform was built to decode the neural activity of different subjects in a static state. Experimental evaluation of the proposed recognition algorithm presents an accuracy of 91.56%, which resolves the “one person one model” issue along with the difficulty of convergence in the training process.
机译:基于图像的大脑 - 计算机接口(BCIS)旨在通过识别和分类来自脑电图(EEG)图案的各种自然命令来解码不同的神经活动,进入控制信号,然后控制相应的设备。然而,几种传统的BCI识别算法具有“一个人,一个型号”问题,其中识别模型的培训过程的收敛性复杂。在本研究中,提出了一种具有密集的长短期存储器(DENSE-LSTM)算法的新BCI模型,其结合了与所基于图像的BCI的事件相关的Desynchronization(ERD)和事件相关的同步(ERS)。 ;使用自己的数据集进行模型培训和测试。此外,建立了一个新的实验平台,以解释在静态状态下的不同受试者的神经活动。所提出的识别算法的实验评估提出了91.56%的准确性,这与培训过程中收敛的难度决定了“一个人一个模型”问题。

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