Miscellaneous EEG Preprocessing and Machine Learning for Pilots' Mental States Classification: Implications

Ibrahim Mohammad Alreshidi, I. Moulitsas, Karl W. Jenkins
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引用次数: 3

Abstract

Higher cognitive process efforts may result in mental exhaustion, poor performance, and long-term health issues. An EEG-based methods for detecting a pilot's mental state have recently been created utilizing machine learning algorithms. EEG signals include a significant noise component, and these approaches either ignore this or use a random mix of preprocessing techniques to reduce noise. In the absence of uniform preprocessing procedures for cleaning, it would be impossible to compare the efficacy of machine learning models across research, even if they employ data obtained from the same experiment. In this study, we intend to evaluate how preprocessing approaches affect the performance of machine learning models. To do this, we concentrated on fundamental preprocessing techniques, such as a band-pass filter and independent component analysis. Using a publicly accessible actual physiological dataset gathered from a pilot who was exposed to a variety of mental events, we explore the influence of these preprocessing strategies on two machine learning models, SVMs and ANNs. Our findings indicate that the performance of the models is unaffected by preprocessing techniques. Moreover, our findings indicate that the models were able to anticipate the mental states from merged data collected in two environments. These findings demonstrate the necessity for a standardized methodological framework for the application of machine learning models to EEG inputs.
脑电预处理与机器学习对飞行员心理状态分类的启示
较高的认知过程努力可能导致精神疲惫、表现不佳和长期健康问题。最近,利用机器学习算法,开发出了以脑电图为基础的飞行员精神状态检测方法。脑电图信号包含显著的噪声成分,这些方法要么忽略这一点,要么使用随机混合的预处理技术来降低噪声。在缺乏统一的清洁预处理程序的情况下,即使使用从同一实验中获得的数据,也不可能比较不同研究中机器学习模型的功效。在这项研究中,我们打算评估预处理方法如何影响机器学习模型的性能。为了做到这一点,我们专注于基本的预处理技术,如带通滤波器和独立分量分析。利用从暴露于各种心理事件的飞行员那里收集的可公开访问的实际生理数据集,我们探索了这些预处理策略对两种机器学习模型(svm和ann)的影响。我们的研究结果表明,模型的性能不受预处理技术的影响。此外,我们的研究结果表明,这些模型能够从两个环境中收集的合并数据中预测心理状态。这些发现证明了将机器学习模型应用于脑电图输入的标准化方法框架的必要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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