ISAE-SUPAERO, Université de Toulouse, Toulouse, France.
PLoS One. 2021 Feb 18;16(2):e0247061. doi: 10.1371/journal.pone.0247061. eCollection 2021.
During a flight, pilots must rigorously monitor their flight instruments since it is one of the critical activities that contribute to update their situation awareness. The monitoring is cognitively demanding, but is necessary for timely intervention in the event of a parameter deviation. Many studies have shown that a large part of commercial aviation accidents involved poor cockpit monitoring from the crew. Research in eye-tracking has developed numerous metrics to examine visual strategies in fields such as art viewing, sports, chess, reading, aviation, and space. In this article, we propose to use both basic and advanced eye metrics to study visual information acquisition, gaze dispersion, and gaze patterning among novices and pilots. The experiment involved a group of sixteen certified professional pilots and a group of sixteen novice during a manual landing task scenario performed in a flight simulator. The two groups landed three times with different levels of difficulty (manipulated via a double task paradigm). Compared to novices, professional pilots had a higher perceptual efficiency (more numerous and shorter dwells), a better distribution of attention, an ambient mode of visual attention, and more complex and elaborate visual scanning patterns. We classified pilot's profiles (novices-experts) by machine learning based on Cosine KNN (K-Nearest Neighbors) using transition matrices. Several eye metrics were also sensitive to the landing difficulty. Our results can benefit the aviation domain by helping to assess the monitoring performance of the crews, improve initial and recurrent training and ultimately reduce incidents, and accidents due to human error.
在飞行过程中,飞行员必须严格监控飞行仪表,因为这是有助于更新其态势感知的关键活动之一。监控需要认知能力,但对于在参数偏差时及时干预是必要的。许多研究表明,商业航空事故的很大一部分涉及机组人员对驾驶舱监控不力。眼动追踪研究开发了许多指标来研究艺术观赏、体育、国际象棋、阅读、航空和太空等领域的视觉策略。在本文中,我们建议使用基本和高级眼动指标来研究新手和飞行员的视觉信息获取、注视分散和注视模式。该实验涉及一组 16 名认证的专业飞行员和一组 16 名新手,他们在飞行模拟器中执行手动着陆任务场景。两组人以不同的难度水平进行了三次着陆(通过双任务范式进行操纵)。与新手相比,专业飞行员的感知效率更高(更多且更短的停留),注意力分布更好,视觉注意力处于环境模式,视觉扫描模式更复杂、更精细。我们基于余弦 KNN(K 近邻)使用转移矩阵通过机器学习对飞行员的个人资料(新手-专家)进行分类。几个眼动指标也对着陆难度敏感。我们的研究结果可以通过帮助评估机组人员的监控性能,改进初始和复训,最终减少因人为错误导致的事故和事故,从而使航空领域受益。