Institute of Cognitive Neuroscience, University College London, London, UK.
Queensland Brain Institute, The University of Queensland, Brisbane, Australia.
Cogn Res Princ Implic. 2023 Aug 31;8(1):56. doi: 10.1186/s41235-023-00498-7.
Highly-automated technologies are increasingly incorporated into existing systems, for instance in advanced car models. Although highly automated modes permit non-driving activities (e.g. internet browsing), drivers are expected to reassume control upon a 'take over' signal from the automation. To assess a person's readiness for takeover, non-invasive eye tracking can indicate their attentive state based on properties of their gaze. Perceptual load is a well-established determinant of attention and perception, however, the effects of perceptual load on a person's ability to respond to a takeover signal and the related gaze indicators are not yet known. Here we examined how load-induced attentional state affects detection of a takeover-signal proxy, as well as the gaze properties that change with attentional state, in an ongoing task with no overt behaviour beyond eye movements (responding by lingering the gaze). Participants performed a multi-target visual search of either low perceptual load (shape targets) or high perceptual load (targets were two separate conjunctions of colour and shape), while also detecting occasional auditory tones (the proxy takeover signal). Across two experiments, we found that high perceptual load was associated with poorer search performance, slower detection of cross-modal stimuli, and longer fixation durations, while saccade amplitude did not consistently change with load. Using machine learning, we were able to predict the load condition from fixation duration alone. These results suggest monitoring fixation duration may be useful in the design of systems to track users' attentional states and predict impaired user responses to stimuli outside of the focus of attention.
高度自动化的技术越来越多地被融入到现有系统中,例如在高级汽车模型中。虽然高度自动化模式允许进行非驾驶活动(例如浏览互联网),但驾驶员应在自动化发出“接管”信号后重新控制车辆。为了评估人员接管的准备情况,非侵入式眼动追踪可以根据注视的特性来指示其专注状态。感知负荷是注意力和感知的一个既定决定因素,然而,感知负荷对人员响应接管信号的能力以及相关注视指标的影响尚不清楚。在这里,我们研究了在没有超出眼动(通过凝视停留来响应)的显式行为的持续任务中,负荷引起的注意状态如何影响接管信号代理的检测,以及随着注意状态变化的注视特性,参与者进行了低感知负荷(形状目标)或高感知负荷(目标是颜色和形状的两个单独的结合)的多目标视觉搜索,同时还检测偶尔的听觉音调(代理接管信号)。在两项实验中,我们发现高感知负荷与较差的搜索性能、跨模态刺激的检测速度较慢以及注视持续时间较长有关,而扫视幅度并不始终随负荷而变化。使用机器学习,我们能够仅从注视持续时间预测负荷条件。这些结果表明,监测注视持续时间可能有助于设计系统来跟踪用户的注意力状态,并预测用户对注意力焦点之外的刺激的反应受损。
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