Fast channel selection method using crow search algorithm

Zaineb M. Alhakeem, R. Ali
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引用次数: 9

Abstract

In Brain Computer Interface (BCI), the brain signals are used to perform some commands or actions in a computer. Brain signals are recorded using many methods. Electroencephalogram (EEG) is one of the non-invasive methods. EEG signals are recorded using multiple channels. Selection methods are used to choose the most relevant and powerful signals. Usually Meta-heuristic algorithms are used for selection. Meta-heuristic algorithms depends on random generated population of solutions for the objective function. Because of the randomness, there is always a chance to select zero as a solution. Zero in EEG channels selection means no channel is chosen to extract its signal features. This situation is not practical, the selection process should be repeated whenever a zero solution appears. The repetition will reduce the algorithm speed. This paper introduces a fast channel selection algorithm using Crow Search Algorithm (CSA). CSA is used to select the best channels offline. Using no-zero channel condition to fasten the algorithm. Our results show that CSA with no-zero channels condition is better than Genetic algorithm (GA). Although CSA and GA results are almost have the same accuracy, but CSA with no-zero condition is faster.
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基于乌鸦搜索算法的快速信道选择方法
在脑机接口(BCI)中,大脑信号被用来在计算机中执行一些命令或动作。记录大脑信号的方法有很多。脑电图(EEG)是一种无创的方法。脑电图信号记录使用多个通道。选择方法用于选择最相关和最强大的信号。通常使用元启发式算法进行选择。元启发式算法依赖于随机生成的目标函数解的总体。由于随机性,总是有可能选择零作为解。脑电信号通道选择为零,即不选择任何通道提取其信号特征。这种情况是不实际的,只要出现零解,就应该重复选择过程。重复会降低算法的速度。介绍了一种基于Crow搜索算法(CSA)的快速信道选择算法。CSA用于离线选择最佳信道。采用无零信道条件来固定算法。研究结果表明,非零信道条件下的CSA算法优于遗传算法(GA)。虽然CSA和GA结果几乎具有相同的精度,但无零条件下的CSA更快。
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