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Designs and Algorithms to Map Eye Tracking Data with Dynamic Multielement Moving Objects

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Specialty Biology
Date 2016 Oct 12
PMID 27725830
Citations 2
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Abstract

Design concepts and algorithms were developed to address the eye tracking analysis issues that arise when (1) participants interrogate dynamic multielement objects that can overlap on the display and (2) visual angle error of the eye trackers is incapable of providing exact eye fixation coordinates. These issues were addressed by (1) developing dynamic areas of interests (AOIs) in the form of either convex or rectangular shapes to represent the moving and shape-changing multielement objects, (2) introducing the concept of AOI gap tolerance (AGT) that controls the size of the AOIs to address the overlapping and visual angle error issues, and (3) finding a near optimal AGT value. The approach was tested in the context of air traffic control (ATC) operations where air traffic controller specialists (ATCSs) interrogated multiple moving aircraft on a radar display to detect and control the aircraft for the purpose of maintaining safe and expeditious air transportation. In addition, we show how eye tracking analysis results can differ based on how we define dynamic AOIs to determine eye fixations on moving objects. The results serve as a framework to more accurately analyze eye tracking data and to better support the analysis of human performance.

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References
1.
Kang Z, Landry S . Using scanpaths as a learning method for a conflict detection task of multiple target tracking. Hum Factors. 2014; 56(6):1150-62. DOI: 10.1177/0018720814523066. View

2.
Belkacem A, Saetia S, Zintus-art K, Shin D, Kambara H, Yoshimura N . Real-Time Control of a Video Game Using Eye Movements and Two Temporal EEG Sensors. Comput Intell Neurosci. 2015; 2015:653639. PMC: 4672363. DOI: 10.1155/2015/653639. View

3.
Tvaryanas A . Visual scan patterns during simulated control of an uninhabited aerial vehicle (UAV). Aviat Space Environ Med. 2004; 75(6):531-8. View

4.
Konstantopoulos P, Chapman P, Crundall D . Driver's visual attention as a function of driving experience and visibility. Using a driving simulator to explore drivers' eye movements in day, night and rain driving. Accid Anal Prev. 2010; 42(3):827-34. DOI: 10.1016/j.aap.2009.09.022. View

5.
Cristino F, Mathot S, Theeuwes J, Gilchrist I . ScanMatch: a novel method for comparing fixation sequences. Behav Res Methods. 2010; 42(3):692-700. DOI: 10.3758/BRM.42.3.692. View