College of Information Science and Technology, Beijing Normal University, Beijing, People's Republic of China.
J Neural Eng. 2012 Oct;9(5):056013. doi: 10.1088/1741-2560/9/5/056013. Epub 2012 Sep 17.
Categorization of images containing visual objects can be successfully recognized using single-trial electroencephalograph (EEG) measured when subjects view images. Previous studies have shown that task-related information contained in event-related potential (ERP) components could discriminate two or three categories of object images. In this study, we investigated whether four categories of objects (human faces, buildings, cats and cars) could be mutually discriminated using single-trial EEG data. Here, the EEG waveforms acquired while subjects were viewing four categories of object images were segmented into several ERP components (P1, N1, P2a and P2b), and then Fisher linear discriminant analysis (Fisher-LDA) was used to classify EEG features extracted from ERP components. Firstly, we compared the classification results using features from single ERP components, and identified that the N1 component achieved the highest classification accuracies. Secondly, we discriminated four categories of objects using combining features from multiple ERP components, and showed that combination of ERP components improved four-category classification accuracies by utilizing the complementarity of discriminative information in ERP components. These findings confirmed that four categories of object images could be discriminated with single-trial EEG and could direct us to select effective EEG features for classifying visual objects.
使用受试者观看图像时测量的单次脑电图(EEG)可以成功识别包含视觉对象的图像的分类。以前的研究表明,事件相关电位(ERP)成分中包含的与任务相关的信息可以区分两类或三类对象图像。在这项研究中,我们研究了是否可以使用单次 EEG 数据相互区分四类对象(人脸、建筑物、猫和汽车)。在这里,将受试者观看四类对象图像时获得的 EEG 波形分割成几个 ERP 成分(P1、N1、P2a 和 P2b),然后使用 Fisher 线性判别分析(Fisher-LDA)对从 ERP 成分中提取的 EEG 特征进行分类。首先,我们比较了使用单个 ERP 成分特征的分类结果,并确定 N1 成分达到了最高的分类准确率。其次,我们使用多个 ERP 成分的组合特征来区分四类对象,并表明 ERP 成分的组合通过利用 ERP 成分中判别信息的互补性提高了四类分类的准确率。这些发现证实,使用单次 EEG 可以区分四类对象图像,并指导我们选择有效的 EEG 特征来对视觉对象进行分类。