脑电信号对同一肢体精细手部运动的分类。

J. Sánchez
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引用次数: 0

摘要

由于脑电图(EEG)信号在大脑运动皮层区域的紧密空间表征、信噪比和这种信号的随机性,使用脑电图(EEG)信号识别同一肢体内的精细运动是目前对非侵入性脑机接口系统的挑战。本文研究了基于线性判别分析(LDA)方法和功率谱密度(PSD)特征的不同分类策略在握拳、张开手和保持手解剖位置三种任务下的性能评价。为此,收集了10名健康受试者的脑电图信号,并使用不同的交叉验证方法进行评估:蒙特卡罗,以实现离线分析,并将一个留出来进行伪在线实现。结果表明,离线和伪在线分析对每个任务开始的平均分类准确率约为76%,两种方法对运动开始的分类准确率分别为54%和62%,类间分类准确率分别为45%和32%。基于这些结果,可以说,基于PSD特征和LDA方法的BCI实现可以检测所提出任务之一的开始,但为了区分运动,需要实现不同的策略以提高分类问题的准确性。
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Classification of fine hand movements of the same limb through EEG signals.
Discriminating fine movements within the same limb using electroencephalography (EEG) signals is a current challenge to non-invasive BCIs systems due to the close spatial representations on the motor cortex area of the brain, the signal-to-noise ratio, and the stochastic nature of this kind of signals. This research presents the performance evaluation of different strategies of classification using Linear Discriminant Analysis (LDA) method and power spectral density (PSD) features for three tasks: make a fist, open the hand, and keep the anatomical position of the hand. For this, EEG signals were collected from 10 healthy subjects and evaluated with different cross-validation methods: Monte Carlo, to implement an Offline Analysis And Leave-one-out for a pseudo-online implementation. The results show that the average accuracy for classifying the start of each task is approximately 76% for offline and Pseudo-online Analysis, classifying just the start of movement is 54% and 62% respectively for same both methods and 45% for and 32% classifying between classes. Based on these results, it can be said that the implementation of a BCI based on PSD features and LDA method could work to detect the start of one of the proposed tasks, but to discriminate the movement it is necessary to implement a different strategy for increase accuracy in the classification problem.
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