运动意象脑机接口常用空间模式技术综述

Srinath Akuthota, K.Raj Kumar, J.Ravi Chander
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引用次数: 0

摘要

背景:使用运动图像的脑机接口有望通过大脑信号进行直接交流和控制。公共空间模式(Common Spatial Pattern, CSP)技术已经成为从需要运动图像的任务的脑电图(EEG)信号中提取鉴别特征的有力工具。目的:本文旨在全面分析运动意象脑机接口中使用的不同CSP技术,突出其优势和局限性。方法:回顾文献,总结了各种CSP技术,包括黎曼CSP、基于深度学习的CSP、多路CSP、时间加权CSP等。对于每种技术,我们研究了它们的基本原理、算法实现、优点、缺点、使用的过滤技术、分类精度、使用的数据集和相关评论。结论:理解和比较不同的CSP技术对于提高基于运动图像的脑机接口的性能至关重要。每种技术都有自己的优点和考虑因素,例如计算复杂性和对不同BCI场景的适应性。这项调查为研究人员和从业者选择合适的CSP技术提供了宝贵的资源,通过提高基于运动图像的脑机接口的可靠性和准确性,推动该领域朝着成功的脑控制系统发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Complete Survey on Common Spatial Pattern Techniques in Motor Imagery BCI
Background: Brain-computer interfaces that use motor imagery hold promise for direct communication and control through brain signals. Common Spatial Pattern (CSP) techniques have emerged as powerful tools for extracting discriminative features from electroencephalogram (EEG) signals in tasks requiring motor imagery. Objective: This survey paper aims to provide a comprehensive analysis of different CSP techniques employed in motor imagery BCIs, highlighting their strengths and limitations. Methods: We reviewed the literature and identified various CSP techniques, including Riemannian CSP, deep learning-based CSP, multiway CSP, and temporally weighted CSP etc. For each technique, we examined their underlying principles, algorithmic implementation, advantages, disadvantages, filtering technique used, classification accuracy, dataset used and relevant comments. Conclusion: Understanding and comparing different CSP techniques are crucial for enhancing the performance of motor imagery-based BCIs. Each technique has its own advantages and considerations, such as computational complexity and adaptability to different BCI scenarios. This survey serves as a valuable resource for researchers and practitioners in selecting appropriate CSP techniques to advance the area towards successful brain-controlled systems by enhancing the reliability and accuracy of motor imagery-based BCIs.
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