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首页> 外文期刊>Human-Machine Systems, IEEE Transactions on >Recognition of Mental Workload Levels Under Complex Human–Machine Collaboration by Using Physiological Features and Adaptive Support Vector Machines
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Recognition of Mental Workload Levels Under Complex Human–Machine Collaboration by Using Physiological Features and Adaptive Support Vector Machines

机译:利用生理特征和自适应支持向量机识别复杂人机协作下的心理工作量

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摘要

In order to detect human operator performance degradation or breakdown, this paper proposes an adaptive support vector machine-based method to classify operator mental workload (MWL) into few discrete levels based on psychophysiological measures. Electroencephalogram, electrocardiogram, and electrooculography signals were recorded continuously while the operator was performing safety-critical process control operations in a simulated human–machine system. In coarse-grained analysis, the adaptive exponential smoothing (AES) technique is used to smooth the psychophysiological data and to remove strong artifacts without requiring templates. The MWL level is classified every 30 s by using bounded support vector machine (BSVM) and tenfold cross-validation techniques. Locality preservation projection (LPP) technique is utilized to derive salient psychophysiological features by means of feature reduction. By combining the AES-LPP and BSVM methods, the accuracy of the coarse-grained MWL classification was significantly improved by 11–13%. On the other hand, to perform MWL classification with higher temporal resolution and cross-subject and cross-trial generalizability, finer-grained data analysis is also conducted to recognize MWL levels every 5 s based on a combination of adaptive BSVM (ABSVM) and AES techniques. In comparison with the use of the BSVM algorithm alone, a significant performance improvement by 10–20% is achieved by using the AES-ABSVM method in the finer-grained MWL classification.
机译:为了检测操作人员的绩效下降或故障,本文提出了一种基于自适应支持向量机的方法,根据心理生理指标将操作人员的心理工作量(MWL)分为几个离散级别。当操作员在模拟人机系统中执行安全关键的过程控制操作时,将连续记录脑电图,心电图和眼电图信号。在粗粒度分析中,自适应指数平滑(AES)技术用于对心理生理数据进行平滑处理,并在不需要模板的情况下去除强烈的伪影。使用有界支持向量机(BSVM)和十倍交叉验证技术每30秒对MWL级别进行一次分类。局部性保留投影(LPP)技术用于通过特征约简得出重要的心理生理特征。通过结合AES-LPP和BSVM方法,粗粒MWL分类的准确性显着提高了11-13%。另一方面,为了执行具有更高时间分辨率以及跨主题和跨试验通用性的MWL分类,还基于自适应BSVM(ABSVM)和AES的组合进行了更细粒度的数据分析,以每5秒识别一次MWL级别技术。与仅使用BSVM算法相比,在更细粒度的MWL分类中使用AES-ABSVM方法可将性能显着提高10-20%。

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