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首页> 外文期刊>ACM Transactions on Applied Perception (TAP) >Photoplethysmogram-based Cognitive Load Assessment Using Multi-Feature Fusion Model
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Photoplethysmogram-based Cognitive Load Assessment Using Multi-Feature Fusion Model

机译:多特征融合模型的基于光体积描记图的认知负荷评估

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摘要

Cognitive load assessment is crucial for user studies and human-computer interaction designs. As a noninvasive and easy-touse category of measures, current photoplethysmogram- (PPG) based assessment methods rely on single or small-scale predefined features to recognize responses induced by people's cognitive load, which are not stable in assessment accuracy. In this study, we propose a machine-learning method by using 46 kinds of PPG features together to improve the measurement accuracy for cognitive load. We test the method on 16 participants through the classical n-back tasks (0-back, 1-back, and 2-back). The accuracy of the machine-learning method in differentiating different levels of cognitive loads induced by task difficulties can reach 100% in 0-back vs. 2-back tasks, which outperformed the traditional HRV-based and single-PPG-feature-based methods by 12-55%. When using "leave-one-participant-out" subject-independent cross validation, 87.5% binary classification accuracy was reached, which is at the state-of-the-art level. The proposed method can also support real-time cognitive load assessment by beat-to-beat classifications with better performance than the traditional single-feature-based real-time evaluation method.
机译:认知负载评估对于用户研究和人机交互设计至关重要。作为一种非侵入性且易于使用的措施,当前基于光电体积描记图(PPG)的评估方法依靠单个或小规模的预定义功能来识别由人们的认知负荷引起的反应,这些反应的评估准确性不稳定。在这项研究中,我们提出了一种通过结合使用46种PPG功能来提高认知负荷的测量精度的机器学习方法。我们通过经典的n-back任务(0-back,1-back和2-back)在16位参与者上测试了该方法。机器学习方法区分由任务困难引起的不同层次的认知负荷的准确性在0向和2向任务中可以达到100%,优于传统的基于HRV和基于单PPG特征的方法减少12-55%。当使用“不参与一个参与者”交叉验证时,达到了87.5%的二进制分类准确度,处于最新水平。与传统的基于单特征的实时评估方法相比,所提出的方法还可以通过逐次分类支持实时认知负荷评估。

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