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Classification of mental workload based on multiple features of ECG signals

机译:基于ECG信号的多个特征的心理工作量分类

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Mental Workload (MW) has become an important problem in the design of man-machine systems, so its related detection and analysis technology has aroused extensive interest and concern. Researches show electrocardiogram (ECG) physiological signals can be an appropriate indicator to reflect the level of human MW. When the operator is in the state of high MW, the cardiac load will increase, and the period and shape of ECG signals accordingly change. Heart Rate Variability (HRV) is the most widely used ECG feature to assess the MW. However, its classification precision is not high enough. In order to improve this, multiple features of ECG signals are extracted to classify the MW in this paper. Besides the RR interval feature of HRV, the other three features, T and P wave power, QRS complex power and Sample Entropy (SampEn) of ECG waveform, are further extracted and applied to assess MW. The Support Vector Machine (SVM) is used to establish the classification model, and the grid search and cross-validation algorithm are used to optimize its parameters. The results show the MW classifier based on multiple features of ECG signals can evidently improve the classification accuracy. This will be helpful to realize a real time and online MW classification using ECG data.
机译:心理工作量(MW)已成为人机系统设计中的一个重要问题,因此其相关的检测和分析技术引起了广泛的兴趣和关注。研究表明心电图(ECG)生理信号可以是反映人体MW水平的适当指标。当操作者处于高MW状态时,心负荷将增加,并且ECG信号的时期和形状相应地改变。心率变异性(HRV)是最广泛使用的ECG功能,以评估MW。但是,它的分类精度不够高。为了提高这一点,提取了ECG信号的多个特征以在本文中对MW进行分类。除了HRV的RR间隔特征之外,还提取了ECG波形的其他三个特征,T和P波功率,QRS复数和样本熵(夹持),并应用于评估MW。支持向量机(SVM)用于建立分类模型,并且使用网格搜索和交叉验证算法来优化其参数。结果显示了基于ECG信号的多个特征的MW分类器可以显然提高分类精度。这将有助于使用ECG数据实现实时和在线MW分类。

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