Galvanic Skin Response signal based Cognitive Load classification using Machine Learning classifier

M. E. Elahi, Iffath Binta Islam
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引用次数: 2

Abstract

Cognitive load (CL) classification is an important research issue in the human-computer interaction paradigm. It is evident from recent research that Galvanic Skin Response (GSR) can be used to sense cognitive load. CL analysis is important for understanding the mental growth of the child and the psychology of patients going through the different traumatic situation. Inspired by such a novel application, this model is designed. In this work, a technique has been demonstrated to measure and evaluate the level of human cognitive load for different tasks by collecting GSR from 40 student participants. The students are asked to sit for a test to solve three different tasks — reading comprehension, solving mathematics, and cracking Sudoku. Time-domain features have been extracted from participant’s GSR signals while these tasks are being analyzed. Some parameters such as Correlation Dimension (CD), Lempel-Ziv Complexity (LZC), Hurst Exponent (HE) and Shannon Entropy (SE) are used to analyze CL and these are used as features while accomplishing classification. The Level of stress or cognitive load is strongly observed with the one-way ANOVA test and box-whisker plots. Next, several machine learning algorithms are used to classify the various level of cognitive load. Using the 10 fold cross-validation and Naïve Bayes algorithm 91.5% accuracy is obtained.
基于皮肤电反应信号的机器学习分类器认知负荷分类
认知负荷分类是人机交互范式中的一个重要研究课题。最近的研究表明,皮肤电反应(GSR)可以用来感知认知负荷。CL分析对于了解儿童的心理成长和不同创伤情况下患者的心理具有重要意义。受这种新颖应用的启发,设计了这个模型。在这项工作中,通过收集40名学生参与者的GSR,证明了一种技术可以测量和评估人类对不同任务的认知负荷水平。学生们被要求参加一项测试,解决三个不同的任务——阅读理解、数学解题和破解数独。在分析这些任务时,从参与者的GSR信号中提取了时域特征。利用相关维数(CD)、Lempel-Ziv复杂度(LZC)、Hurst指数(HE)和Shannon熵(SE)等参数对CL进行分析,并将这些参数作为特征进行分类。压力或认知负荷水平通过单因素方差分析检验和盒须图被强烈观察到。接下来,使用几种机器学习算法对不同水平的认知负荷进行分类。采用10倍交叉验证和Naïve贝叶斯算法,准确率达到91.5%。
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