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A Survey on Machine Learning Algorithms in Little-Labeled Data for Motor Imagery-Based Brain-Computer Interfaces

机译:基于电机图像的脑电脑接口小标记数据中的机器学习算法调查

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摘要

The Brain-Computer Interfaces(BCIs)had been proposed and used in therapeutics for decades.However,the need of time-consuming calibration phase and the lack of robustness,which are caused by little-labeled data,are restricting the advance and application of BCI,especially for the BCI based on motor imagery(MI).In this paper,we reviewed the recent development in the machine learning algorithm used in the MI-based BCI,which may provide potential solutions for addressing the issue.We classified these algorithms into two categories,namely,and enhancing the representation and expanding the training set.Specifically,these methods of enhancing the representation of features collected from few EEG trials are based on extracting features of multiple bands,regularization,and so on.The methods of expanding the training dataset include approaches of transfer learning(session to session transfer,subject to subject transfer)and generating artificial EEG data.The result of these techniques showed the resolution of the challenges to some extent.As a developing research area,the study of BCI algorithms in little-labeled data is increasingly requiring the advancement of human brain physiological structure research and more transfer learning algorithms research.
机译:脑 - 计算机接口(BCIS)已经提出并在治疗方法中使用了几十年。然而,需要耗时的校准阶段和缺乏稳健性,这是由较少标记的数据引起的,这是限制预先和应用BCI,特别是对于基于电机图像(MI)的BCI。本文介绍了基于MI的BCI的机器学习算法的最新发展,这可能提供解决问题的潜在解决方案。我们分类了这些算法分为两类,即加强表示和扩展培训集。特殊地,这些增强了从eEG试验中收集的特征表示的方法基于提取多个频带,正则化等的提取方法。扩展方法训练数据集包括转移学习方法(会话到会话传输,受试者转移的转移)并生成人工脑电图数据。这些技术的结果显示了解决挑战在一定程度上的挑战。一个开发研究领域,对BCI算法的研究较少标记的数据越来越多地需要推进人脑生理结构研究和更多的转移学习算法研究。

著录项

  • 来源
    《信息隐藏与隐私保护杂志(英文)》 |2019年第001期|P.11-21|共11页
  • 作者单位

    School of Computer and Communication Engineering Changsha University of Science and Technology Changsha 410114 China;

    School of Computer and Communication Engineering Changsha University of Science and Technology Changsha 410114 ChinaHunan Provincial Key Laboratory of Intelligent Processing of Big Data on Transportation Changsha University of Science and Technology Changsha 410114 China;

    School of Computer and Communication Engineering Changsha University of Science and Technology Changsha 410114 ChinaHunan Provincial Key Laboratory of Intelligent Processing of Big Data on Transportation Changsha University of Science and Technology Changsha 410114 China;

    School of Computer and Communication Engineering Changsha University of Science and Technology Changsha 410114 ChinaHunan Provincial Key Laboratory of Intelligent Processing of Big Data on Transportation Changsha University of Science and Technology Changsha 410114 ChinaSchool of Mechanical and Aerospace Engineering Nanyang Technological University Singapore 639798 Singapore;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 chi
  • 中图分类 代数、数论、组合理论;
  • 关键词

    Brain-Computer interface; electroencephalography(EEG); machine learning;

    机译:脑电脑界面;脑电图(EEG);机器学习;
  • 入库时间 2022-08-19 04:55:12
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