模式识别(心理学)
脑电图
计算机科学
脑-机接口
人工智能
特征提取
运动表象
多层感知器
信号处理
分类器(UML)
语音识别
人工神经网络
数字信号处理
心理学
精神科
计算机硬件
作者
Xiaojun Yu,Muhammad Aziz,Yiyan Hou,Haopeng Li,Jialin Lv,Mudasir Jamil
标识
DOI:10.1109/icicn52636.2021.9673818
摘要
Electroencephalogram (EEG) signal processing is the pivotal procedure to decipher meaningful information from the lowkey signals to drive practical applications. This paper investigates an EEG signal processing model, which utilizes three EEG electrode combinations, six feature extraction methods, and seven classification algorithms together with an improved empirical Fourier decomposition (IEFD) for motor imagery (MI) EEG signal analysis. The feasibility of IEFD is further validated on a large GigaDB dataset with 52 participants along with the BCI competition III datasets IVa and IVb. Results reveal that IEFD mechanism yields robust classification outcomes when coupled with 18 electrodes combination, welch PSD features, and multilayer perceptron classifier, and the best classification accuracy of 99.52%, 99.35%, 98.89%, 99.52%, 100%, and 93.19% is achieved for dataset IVa and IVb subjects, respectively. Moreover, the GigaDB dataset yields an average classification accuracy, sensitivity, specificity, and fl-score of 83.84%, 83.71%, 83.98%, and 83.80% accordingly. Results compared with previous studies conclude that the proposed model improves the average classification accuracy by 16.6%. Such promising findings conclude that the proposed IEFD method is robust and adaptive for MI EEG signals classification, independent of subject-to-subject variance for multiple datasets.
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