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Classification of Mental Workload (MWL) using Support Vector Machines (SVM) and Convolutional Neural Networks (CNN)

机译:使用支持向量机(SVM)和卷积神经网络(CNN)对心理工作量(MWL)进行分类

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In the current era of technological advancements and rising human-machine interaction, urged the vital importance of human factors and ergonomics in an industrial collaborative environment. These ergonomic needs have made it essential to analyze the industrial cognitive processes like mental workload (MWL), stress and vigilance in the ecological environment. Conventionally Electroencephalography (EEG) was used for assessment of brain electrical activity but recently functional Near-Infrared Spectroscopy (fNIRS) has immerged as a better substitute for acquiring brain signals with fewer protocols and enhanced spatial resolution. Over the period of time Machine learning algorithms (LDA, k-NN, ANN) are used to classify MWL and affiliated brain functions. Now the trend of employing Deep learning techniques is gaining popularity. In this study, we analyzed and classified MWL states using Machine learning (SVM) and Deep learning (CNN) algorithms. The classification accuracies achieved with Deep learning (CNN) outperformed the accuracies achieved with Machine learning algorithms. The best accuracies were achieved using CNN that are in the range of 80-87%. Finally, a comparison is drawn between Machine learning and Deep learning algorithms for better classification and discrimination of cognitive loads.
机译:在当前技术进步和人机交互日益增长的时代,敦促人为因素和人体工程学在工业协作环境中至关重要。这些符合人体工程学的需求使得分析工业认知过程(如精神工作量(MWL),生态环境中的压力和警惕性)变得至关重要。传统上,脑电图(EEG)用于评估脑电活动,但是最近功能性近红外光谱(fNIRS)已成为一种更好的替代方案,它可以用较少的协议和增强的空间分辨率来获取脑部信号。在一段时间内,机器学习算法(LDA,k-NN,ANN)用于对MWL和相关的脑功能进行分类。现在,采用深度学习技术的趋势越来越流行。在这项研究中,我们使用机器学习(SVM)和深度学习(CNN)算法对MWL状态进行了分析和分类。深度学习(CNN)实现的分类精度优于机器学习算法实现的分类精度。使用CNN可以达到80-87%的最佳精度。最后,在机器学习和深度学习算法之间进行了比较,以更好地分类和区分认知负荷。

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