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Electroencephalography Adaptive Classification and Decoding Techniques

机译:脑电图自适应分类和解码技术

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Electroencephalography (EEG) classification is an essential component of Brain Computer Interface (BCI), which allows to communicate from the human mind to computer, and thus to communicate even for subjects with physical disabilities. There are various classes of classification methods related to EEG-BCI. Researchers have classified these types into four fundamental categories. The first is an adaptive classification approaches. The second is based on using matrices and tensor class of classification. The third is about the use of transfer learning, and final the fourth is about the use deep learning mechanisms. Given this background, this research framework provides a concise survey of adaptive classification methods employed for EEG based Brain Computer Interface. As indicated to, the adaptive classifiers, are dynamic classifiers where there parameters are incrementally re-evaluated and updated over time as new EEG data become available. In addition, the research frame has picked to establish an overall review to this specific category of classifier since, adaptive type of classifiers, have indicated to be superior to other static types of classifiers, as in reference to limited supervision or unsupervised adaptation, Lotte et al.
机译:脑电图(EEG)分类是脑电脑界面(BCI)的基本组成部分,其允许从人类思想与计算机沟通,从而甚至用于具有身体残疾的受试者。有各种与EEG-BCI相关的分类方法。研究人员将这些类型分为四个基本类别。首先是自适应分类方法。第二代是基于使用矩阵和张量级的分类。第三是关于使用转移学习的使用,最后第四个是关于使用深度学习机制。鉴于此背景,该研究框架提供了一种简化的基于EEG基础脑电脑界面采用自适应分类方法的调查。如图所示,自适应分类器是动态分类器,其中随着新的EEG数据可用,随着时间的推移,随着时间的推移,参数被逐步重新评估和更新。此外,研究框架已采摘以建立对该特定类别的分类器的总体审查,因为,自适应类型的分类器,表明要优于其他静态类型的分类器,如引要参考有限的监督或无监督适应,乐天等al。

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