神经阵列的空间投影:经典和新的信号分析技术的简短指南

L. Parra, Jacek P. Dmochovski, Joao Dias, A. Cheveigné
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引用次数: 0

摘要

脑电图和其他神经记录技术通过多种通道同时收集数据。人们提出了各种方法来分析这种高维数据,并使用了各种3个字母的缩写,如PCA, ICA, LDA, SVM, CSP, DSS, CCA, CSD。所有这些方法的共同之处在于,它们通过对空间进行平均来整合信息,不同的技术只是在每个通道对平均值的贡献上有所不同。这有可能大大提高信号质量。本次演讲的目的是对现有技术进行概述,重点介绍那些具有易于理解的客观标准的技术。因此,它应该为如何选择最适合给定实验目标的技术提供指导。回顾将从最简单和最直接的想法开始,并以一些尚未广为人知的最新和新颖的技术结束。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatial projections of neural arrays: A short guide to classic and new signal analysis techniques
Electroencephalography and other neural recording techniques collect simultaneous data with a multitude of channels. A variety of methods have been proposed to analyze such high-dimensional data and go by various 3-letter acronyms such as PCA, ICA, LDA, SVM, CSP, DSS, CCA, CSD. What all of these methods have in common is that they integrate information by averaging across space, and the different techniques only differ in the contribution of each channel to the average. This has the potential to substantially improve signal quality. The goal of this presentation is to give an overview of existing techniques focusing on those techniques that have an easy to understand objective criterion. It should thus provide a guide on how to pick the technique that best suits a given experimental goal. The review will start with the simplest and most straightforward idea, and finish with a few more recent and novel techniques that are not yet widely known.
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