» Articles » PMID: 33828703

Using Eye Movement Data Visualization to Enhance Training of Air Traffic Controllers: A Dynamic Network Approach

Overview
Journal J Eye Mov Res
Date 2021 Apr 8
PMID 33828703
Citations 4
Authors
Affiliations
Soon will be listed here.
Abstract

The Federal Aviation Administration (FAA) forecasted substantial increase in the US air traffic volume creating a high demand in Air Traffic Control Specialists (ATCSs). Training times and passing rates for ATCSs might be improved if expert ATCSs' eye movement (EM) characteristics can be utilized to support effective training. However, effective EM visualization is difficult for a dynamic task (e.g. aircraft conflict detection and mitigation) that includes interrogating multi-element targets that are dynamically moving, appearing, disappearing, and overlapping within a display. To address the issues, a dynamic network-based approach is introduced that integrates adapted visualizations (i.e. time-frame networks and normalized dot/bar plots) with measures used in network science (i.e. indegree, closeness, and betweenness) to provide in-depth EM analysis. The proposed approach was applied in an aircraft conflict task using a high-fidelity simulator; employing the use of veteran ATCSs and pseudo pilots. Results show that, ATCSs' visual attention to multi-element dynamic targets can be effectively interpreted and supported through multiple evidences obtained from the various visualization and associated measures. In addition, we discovered that fewer eye fixation numbers or shorter eye fixation durations on a target may not necessarily indicate the target is less important when analyzing the flow of visual attention within a network. The results show promise in cohesively analyzing and visualizing various eye movement characteristics to better support training.

Citing Articles

Computational approaches to apply the String Edit Algorithm to create accurate visual scan paths.

Palma Fraga R, Kang Z J Eye Mov Res. 2025; 17(4).

PMID: 39877930 PMC: 11714258. DOI: 10.16910/jemr.17.4.4.


Classification framework to identify similar visual scan paths using multiple similarity metrics.

Palma Fraga R, Kang Z, Crutchfield J J Eye Mov Res. 2024; 17(3).

PMID: 39411317 PMC: 11476487. DOI: 10.16910/jemr.17.3.4.


Improving the pilot selection process by using eye-tracking tools.

Vlacic S, Knezevic A, Rodenkov S, Mandal S, Vitsas P J Eye Mov Res. 2021; 12(3).

PMID: 33828733 PMC: 7880137. DOI: 10.16910/jemr.12.3.4.


Use of Eye Tracking for Assessment of Electronic Navigation Competency in Maritime Training.

Atik O, Arslan O J Eye Mov Res. 2021; 12(3).

PMID: 33828731 PMC: 7880132. DOI: 10.16910/jemr.12.3.2.


Eye Tracking for Assessment of Situational Awareness in Bridge Resource Management Training.

Atik O J Eye Mov Res. 2021; 12(3).

PMID: 33828730 PMC: 7880130. DOI: 10.16910/jemr.12.3.7.

References
1.
Kurzhals K, Weiskopf D . Space-time visual analytics of eye-tracking data for dynamic stimuli. IEEE Trans Vis Comput Graph. 2013; 19(12):2129-38. DOI: 10.1109/TVCG.2013.194. View

2.
Noton D, Stark L . Scanpaths in eye movements during pattern perception. Science. 1971; 171(3968):308-11. DOI: 10.1126/science.171.3968.308. View

3.
McClung S, Kang Z . Characterization of Visual Scanning Patterns in Air Traffic Control. Comput Intell Neurosci. 2016; 2016:8343842. PMC: 4838798. DOI: 10.1155/2016/8343842. View

4.
Papenmeier F, Huff M . DynAOI: a tool for matching eye-movement data with dynamic areas of interest in animations and movies. Behav Res Methods. 2010; 42(1):179-87. DOI: 10.3758/BRM.42.1.179. View

5.
Newman M . Analysis of weighted networks. Phys Rev E Stat Nonlin Soft Matter Phys. 2004; 70(5 Pt 2):056131. DOI: 10.1103/PhysRevE.70.056131. View