Zafar Raheel, Dass Sarat C, Malik Aamir Saeed
Centre for Intelligent Signal and Imaging Research (CISIR), Universiti Teknologi PETRONAS, Bandar Seri Iskandar, Perak, Malaysia.
PLoS One. 2017 May 30;12(5):e0178410. doi: 10.1371/journal.pone.0178410. eCollection 2017.
Electroencephalogram (EEG)-based decoding human brain activity is challenging, owing to the low spatial resolution of EEG. However, EEG is an important technique, especially for brain-computer interface applications. In this study, a novel algorithm is proposed to decode brain activity associated with different types of images. In this hybrid algorithm, convolutional neural network is modified for the extraction of features, a t-test is used for the selection of significant features and likelihood ratio-based score fusion is used for the prediction of brain activity. The proposed algorithm takes input data from multichannel EEG time-series, which is also known as multivariate pattern analysis. Comprehensive analysis was conducted using data from 30 participants. The results from the proposed method are compared with current recognized feature extraction and classification/prediction techniques. The wavelet transform-support vector machine method is the most popular currently used feature extraction and prediction method. This method showed an accuracy of 65.7%. However, the proposed method predicts the novel data with improved accuracy of 79.9%. In conclusion, the proposed algorithm outperformed the current feature extraction and prediction method.
基于脑电图(EEG)来解码人类大脑活动具有挑战性,这是因为EEG的空间分辨率较低。然而,EEG是一项重要的技术,特别是对于脑机接口应用而言。在本研究中,提出了一种新颖的算法来解码与不同类型图像相关的大脑活动。在这种混合算法中,对卷积神经网络进行修改以提取特征,使用t检验来选择显著特征,并使用基于似然比的得分融合来预测大脑活动。所提出的算法从多通道EEG时间序列获取输入数据,这也被称为多变量模式分析。使用来自30名参与者的数据进行了综合分析。将所提出方法的结果与当前公认的特征提取和分类/预测技术进行了比较。小波变换支持向量机方法是目前最常用的特征提取和预测方法。该方法的准确率为65.7%。然而,所提出的方法以79.9%的更高准确率预测新数据。总之,所提出的算法优于当前的特征提取和预测方法。