How do drivers mitigate the effects of naturalistic visual complexity? : On attentional strategies and their implications under a change blindness protocol.

IF 3.4 2区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL
Vasiliki Kondyli, Mehul Bhatt, Daniel Levin, Jakob Suchan
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Abstract

How do the limits of high-level visual processing affect human performance in naturalistic, dynamic settings of (multimodal) interaction where observers can draw on experience to strategically adapt attention to familiar forms of complexity? In this backdrop, we investigate change detection in a driving context to study attentional allocation aimed at overcoming environmental complexity and temporal load. Results indicate that visuospatial complexity substantially increases change blindness but also that participants effectively respond to this load by increasing their focus on safety-relevant events, by adjusting their driving, and by avoiding non-productive forms of attentional elaboration, thereby also controlling "looked-but-failed-to-see" errors. Furthermore, analyses of gaze patterns reveal that drivers occasionally, but effectively, limit attentional monitoring and lingering for irrelevant changes. Overall, the experimental outcomes reveal how drivers exhibit effective attentional compensation in highly complex situations. Our findings uncover implications for driving education and development of driving skill-testing methods, as well as for human-factors guided development of AI-based driving assistance systems.

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司机如何减轻自然视觉复杂性的影响?变化盲视协议下的注意策略及其影响。
高级视觉处理的局限性如何影响人类在自然的、动态的(多模态)交互环境中的表现,在这种环境中,观察者可以利用经验有策略地将注意力调整到熟悉的复杂性形式?在此背景下,我们研究了驱动环境下的变化检测,以研究旨在克服环境复杂性和时间负荷的注意分配。结果表明,视觉空间复杂性大大增加了变化盲目性,但参与者通过增加对安全相关事件的关注,调整驾驶,避免非生产性的注意力阐述,从而有效地应对这种负荷,从而也控制了“看了但没看到”的错误。此外,对凝视模式的分析表明,司机偶尔但有效地限制了注意力监控和对无关变化的停留。总的来说,实验结果揭示了驾驶员如何在高度复杂的情况下表现出有效的注意力补偿。我们的研究结果揭示了驾驶教育和驾驶技能测试方法发展的意义,以及人为因素引导的基于人工智能的驾驶辅助系统的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.80
自引率
7.30%
发文量
96
审稿时长
25 weeks
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