四类FNIRS-BCI分类精度的提高

Muhammad Saad Bin Abdul Ghaffar, U. S. Khan, Noman Naseer, N. Rashid, M. Tiwana
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引用次数: 2

摘要

近年来,脑机接口(BCI)作为严重瘫痪患者的一种替代通信方式,越来越受到人们的重视。为了使用光学信号来测量大脑活动,可以使用一种相当新的非侵入性脑成像工具,即功能性近红外光谱(fNIRS)。可比性、低成本、安全性、便携性和可穿戴性是使用这种非侵入性方式进行脑成像的主要优点。在本文中,我们建议应用这种相对较新的非侵入性fNIRS技术来制作四种不同心理任务期间的大脑活动图像。这些任务包括心算(MA)、运动想象(即左手和右手运动想象)和休息。使用的fNIRS数据是由连续波成像系统(NIR Scout NIRx GmbH, Berlin, Germany)收集的开放获取数据集,采样频率为10 Hz。本文所做的研究是在数据预处理之前进行数据同步。在对数据进行预处理和信号分析后,我们的结果显示了在执行任务期间多种模式的血流动力学行为。这些独特的血流动力学行为模式可以用来区分和区分不同的任务。我们能够比较、区分和区分在使用3种不同的分类器,即线性判别分析(LDA)、支持向量机(SVM)和K近邻(KNN)执行4种不同任务时捕获的大脑信号活动。使用K近邻(KNN)实现了90%以上的平均分类准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved Classification Accuracy of Four Class FNIRS-BCI
Experimentation and analysis in brain-computer interface (BCI) has increasingly been receiving quite some consideration as a substitute communication possibility for patients who are severely paralyzed in the last few years. To measure brain activities using optical signals a fairly new and non-invasive brain imaging tool can be put to test know as Functional near-infrared spectroscopy (fNIRS). Comparability low cost, safety, portability and wear ability are some of the main advantages of imaging of brain using this non-invasive modality. We propose in this paper to apply this relatively new non-invasive fNIRS technique to make an image of brain activities during four different mental tasks. These tasks include Mental Arithmetic (MA), Motor Imagery (i.e. Left-Hand and Right-Hand Motor Imagery) and Rest. fNIRS data used is an open access dataset which was collected by Continuous-wave imaging system (NIR Scout NIRx GmbH, Berlin, Germany) with the sampling frequency of 10 Hz. The research we have done in this paper Data synchronization is performed before the data is preprocessed. After the preprocessing and signal analysis of data our results shows hemodynamic behavior of multiple patterns during the tasks performed. These unique patterns of hemodynamic behavior can be used to differentiate and distinguish different task. We were able to compare, differentiate and distinguish the brain signal activities captured while performing 4 different tasks using 3 different classifiers i.e. Linear Discriminant Analysis (LDA), Support Vector Machine (SVM) and K Nearest Neighbor (KNN). The average classification accuracy of above 90% is achieved by using K Nearest Neighbors (KNN).
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