通过可穿戴设备传感器估算人机交互场景中认知工作量的途径和方法概览

S. Iarlori, D. Perpetuini, M. Tritto, D. Cardone, Alessandro Tiberio, Manish Chinthakindi, C. Filippini, L. Cavanini, A. Freddi, F. Ferracuti, A. Merla, Andrea Monteriù
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引用次数: 0

摘要

背景:近年来,人机交互(HMI)一直是一个重要的研究领域,因为在工业和医疗保健等领域,机器将继续嵌入人类的许多活动中。从生态学角度监测与机器交互的用户的认知工作量(CW),对于评估他们参与活动的程度和所需的努力至关重要,目的是防止出现压力过大的情况。本研究对在人机界面中使用可穿戴传感器评估认知工作量进行了全面分析。方法:这篇叙述性综述探讨了通过可穿戴传感器收集生理数据的几种技术和程序,这些技术和程序可以整合多种生理信号,对个人的 CW 进行多模态监测。最后,它重点关注了人工智能方法在生理信号数据分析中的影响,以提供可在人机交互界面中利用的化武模型。结果:综述对可穿戴设备、生理信号和用于人机交互界面中化武评估的数据分析方法进行了全面评估。结论:文献强调了在人机交互界面场景中采用可穿戴传感器收集生理信号以进行生态化化武监测的可行性。然而,在不同人群和环境中实现这些测量的标准化仍然存在挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Overview of Approaches and Methods for the Cognitive Workload Estimation in Human–Machine Interaction Scenarios through Wearables Sensors
Background: Human-Machine Interaction (HMI) has been an important field of research in recent years, since machines will continue to be embedded in many human actvities in several contexts, such as industry and healthcare. Monitoring in an ecological mannerthe cognitive workload (CW) of users, who interact with machines, is crucial to assess their level of engagement in activities and the required effort, with the goal of preventing stressful circumstances. This study provides a comprehensive analysis of the assessment of CW using wearable sensors in HMI. Methods: this narrative review explores several techniques and procedures for collecting physiological data through wearable sensors with the possibility to integrate these multiple physiological signals, providing a multimodal monitoring of the individuals’CW. Finally, it focuses on the impact of artificial intelligence methods in the physiological signals data analysis to provide models of the CW to be exploited in HMI. Results: the review provided a comprehensive evaluation of the wearables, physiological signals, and methods of data analysis for CW evaluation in HMI. Conclusion: the literature highlighted the feasibility of employing wearable sensors to collect physiological signals for an ecological CW monitoring in HMI scenarios. However, challenges remain in standardizing these measures across different populations and contexts.
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