Uyulan Caglar, Ergüzel Türker Tekin, Tarhan Nevzat
Department of Mechatronics Engineering, Bulent Ecevit University, Zonguldak, Turkey.
Department of Software Engineering, Uskudar University, Altunizade, Haluk Turksory Street, No: 14, 34662 Uskudar/Istanbul, Turkey.
Biomed Tech (Berl). 2019 Sep 25;64(5):529-542. doi: 10.1515/bmt-2018-0105.
Event-related mental task information collected from electroencephalography (EEG) signals, which are functionally related to different brain areas, possesses complex and non-stationary signal features. It is essential to be able to classify mental task information through the use in brain-computer interface (BCI) applications. This paper proposes a wavelet packet transform (WPT) technique merged with a specific entropy biomarker as a feature extraction tool to classify six mental tasks. First, the data were collected from a healthy control group and the multi-signal information comprised six mental tasks which were decomposed into a number of subspaces spread over a wide frequency spectrum by projecting six different wavelet basis functions. Later, the decomposed subspaces were subjected to three entropy-type statistical measure functions to extract the feature vectors for each mental task to be fed into a backpropagation time-recurrent neural network (BPTT-RNN) model. Cross-validated classification results demonstrated that the model could classify with 85% accuracy through a discrete Meyer basis function coupled with a Renyi entropy biomarker. The classifier model was finally tested in the Simulink platform to demonstrate the Fourier series representation of periodic signals by tracking the harmonic pattern. In order to boost the model performance, ant colony optimization (ACO)-based feature selection method was employed. The overall accuracy increased to 88.98%. The results underlined that the WPT combined with an entropy uncertainty measure methodology is both effective and versatile to discriminate the features of the signal localized in a time-frequency domain.
从脑电图(EEG)信号中收集的与事件相关的心理任务信息,在功能上与不同的脑区相关,具有复杂且非平稳的信号特征。通过在脑机接口(BCI)应用中使用来对心理任务信息进行分类至关重要。本文提出了一种将小波包变换(WPT)技术与特定熵生物标志物相结合的方法作为特征提取工具,以对六种心理任务进行分类。首先,从健康对照组收集数据,多信号信息包含六种心理任务,通过投影六种不同的小波基函数将其分解为分布在较宽频谱上的多个子空间。随后,对分解后的子空间应用三种熵类型的统计度量函数,为每个心理任务提取特征向量,以输入到反向传播时间递归神经网络(BPTT-RNN)模型中。交叉验证的分类结果表明,该模型通过离散Meyer基函数与Renyi熵生物标志物相结合,能够以85%的准确率进行分类。最终在Simulink平台上对分类器模型进行测试,通过跟踪谐波模式来展示周期信号的傅里叶级数表示。为了提高模型性能,采用了基于蚁群优化(ACO)的特征选择方法。总体准确率提高到了88.98%。结果强调,WPT与熵不确定性度量方法相结合,对于区分时频域中局部化信号的特征既有效又通用。