首页> 外文会议>International Joint Conference on Neural Networks;IJCNN 2009 >Recognition and classification of P300s in EEG signals by means of feature extraction using wavelet decomposition
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Recognition and classification of P300s in EEG signals by means of feature extraction using wavelet decomposition

机译:基于小波分解特征提取的脑电信号中P300的识别和分类

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摘要

In the last twenty years the understanding of the brain function and the advent of powerful low-cost computer equipment allowed the birth and the development of the BCI (brain-computer interface), a device that interprets brain activity to issue commands. P300 is a positive peak at about 300 ms from a stimulus, and has been used as a base for a BCI in many studies. The aim of this research consists in recognizing and classifying P300 signals by using wavelet transforms. This study analyzes both the kind of wavelets and which coefficients are more suited for a 100% correct decisions using as few repetitions of stimuli as possible. The classifier performs a quadratic discriminant analysis. The method is tested on the ldquoBCI Competition 2003rdquo data set IIb with excellent results.
机译:在过去的二十年中,由于对大脑功能的了解以及功能强大的低成本计算机设备的出现,使得BCI(脑机接口)的诞生和发展成为了一种解释大脑活动以发出命令的设备。 P300是距刺激约300 ms的正峰,在许多研究中已被用作BCI的基础。这项研究的目的在于利用小波变换对P300信号进行识别和分类。这项研究分析了小波的种类,以及使用尽可能少的重复刺激,哪个系数更适合100%正确决策。分类器执行二次判别分析。该方法在ldquoBCI Competition 2003rdquo数据集IIb上进行了测试,结果非常出色。

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