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使用小波变换和支持向量机从脑电图信号中解码基本类别物体

Decoding objects of basic categories from electroencephalographic signals using wavelet transform and support vector machines.

作者信息

Taghizadeh-Sarabi Mitra, Daliri Mohammad Reza, Niksirat Kavous Salehzadeh

机构信息

Virtual Center, Iran University of Science and Technology (IUST), Tehran, Iran.

出版信息

Brain Topogr. 2015 Jan;28(1):33-46. doi: 10.1007/s10548-014-0371-9. Epub 2014 May 17.

Abstract

Decoding and classification of objects through task-oriented electroencephalographic (EEG) signals are the most crucial goals of recent researches conducted mainly for brain-computer interface applications. In this study we aimed to classify single-trial 12 categories of recorded EEG signals. Ten subjects participated in this study. The task was to select target images among 12 basic object categories including animals, flowers, fruits, transportation devices, body organs, clothing, food, stationery, buildings, electronic devices, dolls and jewelry. In order to decode object categories, we have considered several units namely artifact removing, feature extraction, feature selection, and classification. Data were divided into training, validation, and test sets following the artifact removal process. Features were extracted using three different wavelets namely Daubechies4, Haar, and Symlet2. Features were selected among training data and were reduced afterward via scalar feature selection using three criteria including T test, entropy, and Bhattacharyya distance. Selected features were classified by the one-against-one support vector machine (SVM) multi-class classifier. The parameters of SVM were optimized based on training and validation sets. The classification performance (measured by means of accuracy) was obtained approximately 80 % for animal and stationery categories. Moreover, Symlet2 and T test were selected as better wavelet and selection criteria, respectively.

摘要

通过面向任务的脑电图(EEG)信号对物体进行解码和分类是近期主要针对脑机接口应用开展的研究的最关键目标。在本研究中,我们旨在对记录的12类单试次EEG信号进行分类。10名受试者参与了本研究。任务是从12种基本物体类别中选择目标图像,这些类别包括动物、花朵、水果、运输工具、身体器官、衣物、食物、文具、建筑物、电子设备、玩偶和珠宝。为了解码物体类别,我们考虑了几个单元,即伪迹去除、特征提取、特征选择和分类。在伪迹去除过程之后,数据被分为训练集、验证集和测试集。使用三种不同的小波(Daubechies4、Haar和Symlet2)提取特征。在训练数据中选择特征,然后通过使用T检验、熵和巴氏距离这三个标准的标量特征选择对特征进行降维。所选特征由一对一支持向量机(SVM)多类分类器进行分类。基于训练集和验证集对SVM的参数进行了优化。动物和文具类别的分类性能(以准确率衡量)约为80%。此外,分别选择Symlet2和T检验作为更好的小波和选择标准。

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