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首页> 外文期刊>Human-Machine Systems, IEEE Transactions on >Formal Detection of Attentional Tunneling in Human Operator–Automation Interactions
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Formal Detection of Attentional Tunneling in Human Operator–Automation Interactions

机译:人工操作者中注意隧道的形式检测-自动化交互

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摘要

The allocation of visual attention is a key factor for the humans when operating complex systems under time pressure with multiple information sources. In some situations, attentional tunneling is likely to appear and leads to excessive focus and poor decision making. In this study, we propose a formal approach to detect the occurrence of such an attentional impairment that is based on machine learning techniques. An experiment was conducted to provoke attentional tunneling during which psycho-physiological and oculomotor data from 23 participants were collected. Data from 18 participants were used to train an adaptive neuro-fuzzy inference system (ANFIS). From a machine learning point of view, the classification performance of the trained ANFIS proved the validity of this approach. Furthermore, the resulting classification rules were consistent with the attentional tunneling literature. Finally, the classifier was robust to detect attentional tunneling when performing over test data from four participants.
机译:当在具有多个信息源的时间压力下操作复杂的系统时,视觉注意力的分配是人类的关键因素。在某些情况下,可能会出现注意力隧穿,并导致注意力过多和决策不力。在这项研究中,我们提出了一种基于机器学习技术的正式方法来检测这种注意力障碍的发生。进行了一项实验,以引起注意隧道效应,在此过程中收集了来自23名参与者的心理-生理和动眼功能数据。来自18名参与者的数据用于训练自适应神经模糊推理系统(ANFIS)。从机器学习的角度来看,训练有素的ANFIS的分类性能证明了该方法的有效性。此外,由此产生的分类规则与注意隧穿文献一致。最终,当对来自四个参与者的测试数据进行测试时,分类器具有强大的功能来检测注意力隧道。

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