An Improved Five Class MI Based BCI Scheme for Drone Control Using Filter Bank CSP

Soren Moller Christensen, Nicklas Stubkjær Holm, S. Puthusserypady
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引用次数: 19

Abstract

Worldwide, millions of people are locked in or in a wheelchair, due to several neuromuscular disorders or spinal cord injuries. These individuals are deprived of trivial social activities, like interacting or playing games with other people. Such activities are crucial for personal development, and can have a great impact on the quality of their lives. This work aims at the design and implementation of an electroencephalography (EEG) based motor imagery (MI) brain computer interface (BCI) system that would allow disabled, and able-bodied, individuals alike to control a drone in a 3D physical environment by only using their thoughts. An improved version of the filter bank common spatial pattern (FBCSP) algorithm was developed, and it has shown to perform superior (68.5% accuracy) to the winning FBCSP algorithm (67.8% accuracy), when tested on dataset 2a (4 class MI) of the BCI competition IV. A deep convolutional neural network (CNN) based algorithm was also implemented and tested on the same dataset, which however performed inferior (62.9% accuracy) to the winner, as well as our proposed FBCSP algorithms. The improved FBCSP was then tested on our in-house 5-class (left hand, right hand, tongue, both feet and rest) MI dataset (collected from 10 able-bodied subjects) and obtained a mean accuracy of 41.8±11.74%. This is considered a significant result though it is not good enough to attempt the control of a real drone.
基于滤波器组CSP的无人机控制改进五类MI BCI方案
在世界范围内,由于多种神经肌肉疾病或脊髓损伤,数百万人被锁在轮椅上或坐在轮椅上。这些人被剥夺了琐碎的社交活动,比如与他人互动或玩游戏。这些活动对个人发展至关重要,对他们的生活质量有很大的影响。这项工作旨在设计和实现一个基于脑电图(EEG)的运动图像(MI)脑机接口(BCI)系统,该系统将允许残疾人和健全的人在3D物理环境中只使用他们的思想来控制无人机。我们开发了一种改进版本的滤波器组公共空间模式(FBCSP)算法,在BCI竞赛IV的数据集2a(4类MI)上进行测试时,它的准确率(68.5%)优于获胜的FBCSP算法(67.8%)。我们还在同一数据集上实现了一种基于深度卷积神经网络(CNN)的算法并进行了测试,但该算法的准确率(62.9%)低于获胜者,以及我们提出的FBCSP算法。改进后的FBCSP在我们内部的5类(左手、右手、舌头、双脚和休息)MI数据集(来自10名健全受试者)上进行测试,平均准确率为41.8±11.74%。这被认为是一个重要的结果,尽管它不够好,试图控制一个真正的无人机。
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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