有效人机协作的认知疲劳模型开发中的性别平等

Apostolos Kalatzis, S.K. Hopko, Ranjana K. Mehta, Laura M. Stanley, Mike P. Wittie
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引用次数: 2

摘要

近年来,机器人已成为实现制造业竞争力的关键。特别是在工业环境中,当人类和机器人形成一个动态系统,共同努力实现共同的目标或完成一项任务时,就会达到很强的交互水平。然而,人机协作可能对认知要求很高,可能导致认知疲劳。因此,考虑认知疲劳对于保证人机整体协作的效率和安全性就显得尤为重要。此外,鉴于两性对疲劳的感知和生理差异,性别是一个不可避免的人为因素,需要进一步研究机器学习模型的开发。因此,本研究探讨了认知疲劳检测机器学习模型开发中的性别差异和标签策略。16名参与者,按性别平衡,被招募在疲劳和非疲劳状态下使用UR10协作机器人执行表面处理任务。在整个过程中收集疲劳感知和心率活动数据,为认知疲劳检测创建一个数据集。基于感知(调查回答)和条件(疲劳操作)开发的公平机器学习模型。标签方法对准确性和f1得分有显著影响,其中基于感知的标签导致女性较低的准确性和f1得分,这可能是由于报告疲劳的性别差异。此外,我们观察到心率、算法类型和标记方法之间的关系,其中心率是两种标记方法和所有使用的算法的最显著预测因子。了解标签类型、算法类型和性别对疲劳检测算法设计的影响,对于设计公平的跨性别疲劳适应人机协作至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sex Parity in Cognitive Fatigue Model Development for Effective Human-Robot Collaboration
In recent years, robots have become vital to achieving manufacturing competitiveness. Especially in industrial environments, a strong level of interaction is reached when humans and robots form a dynamic system that works together towards achieving a common goal or accomplishing a task. However, the human-robot collaboration can be cognitively demanding, potentially contributing to cognitive fatigue. Therefore, the consideration of cognitive fatigue becomes particularly important to ensure the efficiency and safety in the overall human-robot collaboration. Additionally, sex is an inevitable human factor that needs further investigation for machine learning model development given the perceptual and physiological differences between the sexes in responding to fatigue. As such, this study explored sex differences and labeling strategies in the development of machine learning models for cognitive fatigue detection. Sixteen participants, balanced by sex, recruited to perform a surface finishing task with a UR10 collaborative robot under fatigued and non-fatigued states. Fatigue perception and heart rate activity data collected throughout to create a dataset for cognitive fatigue detection. Equitable machine learning models developed based on perception (survey responses) and condition (fatigue manipulation). The labeling approach had a significant impact on the accuracy and F1-score, where perception-based labels lead to lower accuracy and F1-score for females likely due to sex differences in reporting of fatigue. Additionally, we observed a relationship between heart rate, algorithm type, and labeling approach, where heart rate was the most significant predictor for the two labeling approaches and for all the algorithms utilized. Understanding the implications of label type, algorithm type, and sex on the design of fatigue detection algorithms is essential to designing equitable fatigue-adaptive human-robot collaborations across the sexes.
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