School of Electrical and Computer Engineering, University of Oklahoma, 110 W. Boyd Street, Devon Energy Hall 150, Norman, OK 73019-1102, USA.
School of Industrial and Systems Engineering, University of Oklahoma, 202 West Boyd Street, No. 116, Norman, OK 73019, USA.
Comput Intell Neurosci. 2016;2016:8343842. doi: 10.1155/2016/8343842. Epub 2016 Apr 7.
Characterization of air traffic controllers' (ATCs') visual scanning strategies is a challenging issue due to the dynamic movement of multiple aircraft and increasing complexity of scanpaths (order of eye fixations and saccades) over time. Additionally, terminologies and methods are lacking to accurately characterize the eye tracking data into simplified visual scanning strategies linguistically expressed by ATCs. As an intermediate step to automate the characterization classification process, we (1) defined and developed new concepts to systematically filter complex visual scanpaths into simpler and more manageable forms and (2) developed procedures to map visual scanpaths with linguistic inputs to reduce the human judgement bias during interrater agreement. The developed concepts and procedures were applied to investigating the visual scanpaths of expert ATCs using scenarios with different aircraft congestion levels. Furthermore, oculomotor trends were analyzed to identify the influence of aircraft congestion on scan time and number of comparisons among aircraft. The findings show that (1) the scanpaths filtered at the highest intensity led to more consistent mapping with the ATCs' linguistic inputs, (2) the pattern classification occurrences differed between scenarios, and (3) increasing aircraft congestion caused increased scan times and aircraft pairwise comparisons. The results provide a foundation for better characterizing complex scanpaths in a dynamic task and automating the analysis process.
由于多架飞机的动态移动以及扫描路径(眼跳和注视的顺序)随时间的推移而变得越来越复杂,因此对空中交通管制员(ATC)的视觉扫描策略进行特征描述是一个具有挑战性的问题。此外,还缺乏术语和方法来准确地将眼动追踪数据描述为 ATC 用语言表达的简化视觉扫描策略。作为自动化特征描述分类过程的中间步骤,我们(1)定义和开发了新的概念,以便将复杂的视觉扫描路径系统地过滤为更简单和更易于管理的形式,(2)开发了将视觉扫描路径与语言输入进行映射的程序,以减少评分者间一致性判断过程中的人为偏见。所开发的概念和程序用于研究不同飞机拥挤程度下的不同场景中专家 ATC 的视觉扫描路径。此外,还分析了眼动趋势,以确定飞机拥挤程度对扫描时间和飞机间比较次数的影响。研究结果表明:(1)在最高强度下过滤的扫描路径导致与 ATC 语言输入更一致的映射;(2)场景之间的模式分类事件存在差异;(3)飞机拥挤程度的增加导致扫描时间和飞机间两两比较次数的增加。研究结果为更好地描述动态任务中的复杂扫描路径以及自动化分析过程提供了基础。