Enhancing the Supervision of Out-of-View Robots: A Study on Multimodal Feedback and Monitoring Screens

Khaled Kassem, Ambika Shahu, C. Tüchler, Philipp Wintersberger, F. Michahelles
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Abstract

Objective: investigating the effect of two support methods (multimodal feedback, monitoring screens, and a combination of both) on human dual-task performance, cognitive workload, and user experience when supervising an out-of-sight autonomous robot. Method: A 2x2 within-group user study was conducted in VR with 26 participants involving a cognitive-cognitive dual-task setting. Participants had to simultaneously solve math problems and supervise the robot. Different support methods were provided: multimodal feedback, a screen showing real-time robot activity, and a combination of both. Objective performance metrics and subjective feedback on cognitive load and user experience were collected using standard questionnaires. Data were statistically analyzed, and thematic analysis was performed on post-study debriefing interviews. Results: The support methods improved overall user experience and positively impacted robot collaboration performance while decreasing math task performance. Cognitive load was unaffected. Multimodal feedback with a monitoring screen was perceived as the most helpful. Conclusion: The results suggest that multimodal feedback can improve user experience and improve supervision, but may partially decrease primary task performance. The findings highlight the importance of examining the effect of support methods in specific situations, depending on task priority.
加强对视线外机器人的监督:多模态反馈与监控屏的研究
目的:调查两种支持方法(多模态反馈、监控屏幕和两者的结合)对人类双任务表现、认知工作量和用户体验的影响,当监督一个视线外的自主机器人时。方法:采用认知-认知双任务设置,在虚拟现实中对26名参与者进行2x2组内用户研究。参与者必须同时解决数学问题和监督机器人。提供了不同的支持方法:多模式反馈,显示实时机器人活动的屏幕,以及两者的组合。使用标准问卷收集客观性能指标和主观反馈的认知负荷和用户体验。对数据进行统计分析,并对研究后述职访谈进行专题分析。结果:支持方法提高了整体用户体验,积极影响机器人协作性能,同时降低了数学任务性能。认知负荷未受影响。带有监控屏幕的多模式反馈被认为是最有帮助的。结论:多模态反馈可以改善用户体验和监督,但可能会部分降低主要任务绩效。研究结果强调了在特定情况下根据任务优先级检查支持方法效果的重要性。
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