Towards an Adaptive Assistance System for Monitoring Tasks: Assessing Mental Workload using Eye-Tracking and Performance Measures

Victoria Buchholz, S. Kopp
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引用次数: 2

Abstract

With the introduction of more and more autonomous machines into the work environment, the role of a worker changes from the sole executor of a task to the observer and supervisor of a system that carries out tasks on her behalf. Often, the transparency and predictability of these systems decrease, making it difficult to comprehend underlying processes for the worker. Moreover, monitoring tasks can impose different levels of workload on the human operator leading to an increased risk of making serious errors. The present research aims at developing an adaptive assistance system for these types of tasks that is able to monitor a worker’s current level of mental workload and provides support without reducing the worker’s autonomy and sense of responsibility. We report results of an experiment using a monitoring task incorporating repeated event sequences to simulate underlying workings of a complex system. Results show that performance in connection with eye-tracking measures are suitable indicators of the level of mental workload and that making the worker aware of underlying structures may reduce workload. Further steps towards an adaptive assistance system for monitoring tasks are discussed.
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面向任务监测的自适应辅助系统:使用眼动追踪和性能测量评估心理工作量
随着越来越多的自动机器进入工作环境,工人的角色从任务的唯一执行者转变为代表她执行任务的系统的观察者和监督者。通常,这些系统的透明度和可预测性会降低,使得工作人员很难理解潜在的过程。此外,监控任务可能会给人工操作员施加不同级别的工作量,从而增加犯严重错误的风险。目前的研究旨在为这些类型的任务开发一种适应性辅助系统,该系统能够监测工人当前的精神工作量水平,并在不降低工人的自主性和责任感的情况下提供支持。我们报告了一项实验的结果,该实验使用监测任务结合重复事件序列来模拟复杂系统的潜在工作。结果表明,与眼球追踪测量相关的表现是心理工作量水平的合适指标,让工人意识到潜在的结构可能会减少工作量。讨论了建立监测任务自适应辅助系统的进一步步骤。
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