论文标题
DGAFF:用于脑电生物信号选择的深遗传算法适应性形成
DGAFF: Deep Genetic Algorithm Fitness Formation for EEG Bio-Signal Channel Selection
论文作者
论文摘要
脑部计算机界面系统旨在通过直接翻译计算机的大脑信号来促进人类计算机的相互作用。最近,使用许多电极在这些系统中引起了更好的性能。但是,增加记录的电极的数量会导致额外的时间,硬件和计算成本,除了录制过程的不希望并发症。通道选择已被用来降低数据维度并消除无关的通道,同时降低噪声效应。此外,该技术降低了实时应用中的时间和计算成本。我们提出了一种通道选择方法,该方法将顺序搜索方法与一种称为“深色GA适应性形成(DGAFF)”的遗传算法结合在一起。提出的方法加速了遗传算法的收敛性并提高了系统的性能。系统评估基于一个轻巧的深神经网络,该网络可自动化整个模型训练过程。所提出的方法在对数据集上的运动图像进行分类方面优于其他通道选择方法。
Brain-computer interface systems aim to facilitate human-computer interactions in a great deal by direct translation of brain signals for computers. Recently, using many electrodes has caused better performance in these systems. However, increasing the number of recorded electrodes leads to additional time, hardware, and computational costs besides undesired complications of the recording process. Channel selection has been utilized to decrease data dimension and eliminate irrelevant channels while reducing the noise effects. Furthermore, the technique lowers the time and computational costs in real-time applications. We present a channel selection method, which combines a sequential search method with a genetic algorithm called Deep GA Fitness Formation (DGAFF). The proposed method accelerates the convergence of the genetic algorithm and increases the system's performance. The system evaluation is based on a lightweight deep neural network that automates the whole model training process. The proposed method outperforms other channel selection methods in classifying motor imagery on the utilized dataset.