Qazi Emad-Ul-Haq, Hussain Muhammad, Aboalsamh Hatim, Malik Aamir Saeed, Amin Hafeez Ullah, Bamatraf Saeed
Visual Computing Lab, Department of Computer Science, College of Computer and Information Sciences, King Saud University Riyadh, Saudi Arabia.
Centre for Intelligent Signal and Imaging Research (CISIR), Department of Electrical and Electronic Engineering, Universiti Teknologi PETRONAS Seri Iskandar, Malaysia.
Front Hum Neurosci. 2017 Jan 20;10:687. doi: 10.3389/fnhum.2016.00687. eCollection 2016.
Assessing a person's intelligence level is required in many situations, such as career counseling and clinical applications. EEG evoked potentials in oddball task and fluid intelligence score are correlated because both reflect the cognitive processing and attention. A system for prediction of an individual's fluid intelligence level using single trial Electroencephalography (EEG) signals has been proposed. For this purpose, we employed 2D and 3D contents and 34 subjects each for 2D and 3D, which were divided into low-ability (LA) and high-ability (HA) groups using Raven's Advanced Progressive Matrices (RAPM) test. Using visual oddball cognitive task, neural activity of each group was measured and analyzed over three midline electrodes (Fz, Cz, and Pz). To predict whether an individual belongs to LA or HA group, features were extracted using wavelet decomposition of EEG signals recorded in visual oddball task and support vector machine (SVM) was used as a classifier. Two different types of Haar wavelet transform based features have been extracted from the band (0.3 to 30 Hz) of EEG signals. Statistical wavelet features and wavelet coefficient features from the frequency bands 0.0-1.875 Hz (delta low) and 1.875-3.75 Hz (delta high), resulted in the 100 and 98% prediction accuracies, respectively, both for 2D and 3D contents. The analysis of these frequency bands showed clear difference between LA and HA groups. Further, discriminative values of the features have been validated using statistical significance tests and inter-class and intra-class variation analysis. Also, statistical test showed that there was no effect of 2D and 3D content on the assessment of fluid intelligence level. Comparisons with state-of-the-art techniques showed the superiority of the proposed system.
在许多情况下,如职业咨询和临床应用中,都需要评估一个人的智力水平。异常球任务中的脑电图诱发电位与流体智力得分相关,因为两者都反映了认知加工和注意力。有人提出了一种使用单次试验脑电图(EEG)信号预测个体流体智力水平的系统。为此,我们采用了2D和3D内容,2D和3D各有34名受试者,使用瑞文高级渐进矩阵(RAPM)测试将他们分为低能力(LA)组和高能力(HA)组。使用视觉异常球认知任务,在三个中线电极(Fz、Cz和Pz)上测量并分析了每组的神经活动。为了预测个体属于LA组还是HA组,使用视觉异常球任务中记录的EEG信号的小波分解提取特征,并使用支持向量机(SVM)作为分类器。从EEG信号的频段(0.3至30Hz)中提取了两种不同类型的基于哈尔小波变换的特征。来自0.0 - 1.875Hz(低δ波)和1.875 - 3.75Hz(高δ波)频段的统计小波特征和小波系数特征,对于2D和3D内容,预测准确率分别为100%和98%。对这些频段的分析显示LA组和HA组之间存在明显差异。此外,使用统计显著性检验以及组间和组内变异分析对特征的判别值进行了验证。而且,统计检验表明2D和3D内容对流体智力水平的评估没有影响。与现有技术的比较显示了所提出系统的优越性。