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Categorizing visual objects; using ERP components

机译:对Visual对象进行分类;使用ERP组件

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Paying attention to different pictures is related to complex information processing in the brain. Categorizing visual objects using the electroencephalogram (EEG) signal of subject along with paying attention to pictures, is properly possible. The aim of this paper is to analyze the mental signal in order to show the differences in cognitive patterns during paying attention to sets of different pictures. For this purpose, EEG signals which were recorded from 45 people were used. Brain signals are recorded over the on head using 8 active electrodes and based on standard 10-20. After the pre-processing, ERP signals were extracted into two classes according to attention to the human face and fruit images. Firstly, 4 types of features has been extracted from N170, P200, N200 and P300 components: (1) time features, (2) non-linear features, (3) statistical features and (4) frequency features. Then dimension of Properties were reduced by using different algorithms. New and innovative work in this paper is using various algorithms for reducing feature dimension such as t-test, t-SNE and kernel t-SNE and comparing their results with each other. Classification of 2 classes were done in order to recognize the differences using SVM and KNN classifiers. Secondly we reexamined this process by using combined features from multiple ERP components and obtained best result in this condition by t-SNE and SVM classifier with 85.5% accuracy.
机译:注意不同的图片与大脑中的复杂信息处理有关。使用脑电图(EEG)信号分类视觉对象以及对图片的注意力进行关注,是可能的。本文的目的是分析心理信号,以便在关注不同图片时展示认知模式的差异。为此目的,使用从45人中记录的EEG信号。使用8个主动电极并基于标准10-20,在头部上记录脑信号。在预处理之后,将ERP信号根据人脸和果实图像被提取为两类。首先,从N170,P200,N200和P300组件中提取了4种特征:(1)时间特征,(2)非线性功能,(3)统计特征和(4)频率特征。然后使用不同的算法减少了性质的尺寸。本文的新和创新工作是使用各种算法来减少特征尺寸,例如T检验,T-SNE和内核T-SNE,并将其结果彼此进行比较。完成2个课程的分类,以识别使用SVM和KNN分类器的差异。其次,我们通过使用来自多个ERP组件的组合特征来重新审视此过程,并通过T-SNE和SVM分类器获得最佳导致T-SNE和SVM分类器,精度为85.5%。

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