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Features of motor-related brain activity revealed via recurrence quantification analysis

机译:电动机相关大脑活动的特征通过复发量化分析显示

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摘要

We propose an approach for motor-related brain activity analysis based on the combination of continuous wavelet transform and recurrence quantification analysis (RQA). Detecting such patterns on EEG is a complex task due to the nonstationarity and complexity of EEG signal, which leads to high inter- and intra-subject variability of traditionally applied methods. We show that RQA measures of complexity, such as recurrence rate an laminarity, are very useful in detection of transitions from background to motor-related EEG. Moreover, RQA measures time dependence for upper limbs is contralateral, which allows us to distinguish two types of movements.
机译:我们提出了一种基于连续小波变换和复发定量分析(RQA)的组合的电动相关脑活动分析方法。 由于EEG信号的非间转性和复杂性,检测EEG上的这种模式是一种复杂的任务,这导致传统应用方法的高和内部内部可变性。 我们表明,复杂性的RQA测量,例如复发率是层状物,可用于检测从背景到电动机相关的eeg的转变。 此外,RQA测量上肢的时间依赖性是对侧,这使我们能够区分两种类型的运动。

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