fNIRS Signals Classification with Ensemble Learning and Adaptive Neuro-Fuzzy Inference System

M. M. Esfahani, H. Sadati
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引用次数: 1

Abstract

Brain-Computer-Interface systems were invented in the last decade to record brain signals and then control a system that behaves and conveys with a biosignal recording device and the brain. Its major objective is to aid individuals who suffer from behavioral infirmity. The focus of this research is to analyze the cortical surface of the brain's hemodynamic response using functional near-infrared spectroscopy signals (fNIRS). It is utilized in a variety of cognitive neuroscience and behavioral rehabilitation treatments. Additionally, it was applied to classify thirty participants who volunteered to do a task divided into three classes. The primary task is to classify multi-class fNIRS signals using various classification methods and then compare the results. We utilized classification methods for each of the 30 subjects, followed by the voting and stacking procedures as part of an ensemble learning method. The averaged results for all subjects reached 64.813 percent, while ensemble learning using the voting method reached 66.416 percent. Following that, ensemble learning using the stacking method combined with the ANFIS kernel reached 60.6616 percent. Finally, the findings suggest that it may improve accuracy and reduce standard deviation depending on the Ensemble Learning approach used. It asserts that when the variance of the predictions was reduced, the classification model produced better results.
基于集成学习和自适应神经模糊推理系统的近红外信号分类
脑机接口系统是在过去十年发明的,用于记录大脑信号,然后通过生物信号记录设备和大脑控制一个系统的行为和传递。它的主要目标是帮助那些患有行为障碍的人。本研究的重点是利用功能性近红外光谱信号(fNIRS)分析大脑皮层表面的血流动力学响应。它被用于各种认知神经科学和行为康复治疗。此外,它还被用于将30名自愿完成一项任务的参与者分为三类。主要任务是利用各种分类方法对多类近红外信号进行分类,并对分类结果进行比较。我们对30个主题中的每个主题使用分类方法,然后进行投票和堆叠程序,作为集成学习方法的一部分。所有科目的平均结果达到64.813%,而使用投票法的集成学习达到66.416%。之后,使用叠加法结合ANFIS核的集成学习达到60.6616%。最后,研究结果表明,根据所使用的集成学习方法,它可以提高准确性并减少标准偏差。它断言,当预测的方差减少时,分类模型产生更好的结果。
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