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Benjamin Noah, Jung-Hyup Kim, Ling Rothrock, & Anand Tharanathan
Eye Tracking within Process Control Monitoring Tasks
Abstract
• This experiment investigated the implementation of eye tracking within the control room environment. Three overview displays (Surface Chart, Heat Map, and Visual Thesaurus) were used to both establish which results in better performance and how eye movement behavior can be used to infer cognitive processing components. 48 operators participated in a human-in-the-loop test bed simulating a crude oil process monitoring task. The experiment was a 3 (display type) x 2 (complexity level) x 2 (trial) mixed factorial design.
• The eye movement behavioral metrics provided interpretations which are largely consistent with performance metrics for the complexity and trial factors. The display factor indicated that the eye metrics were not consistent with performance metrics. While the Surface Chart display facilitated better performance, eye metrics indicated that the Visual Thesaurus display had the preferred monitoring behavior. While comparing eye metrics between visualizations is not recommended, the results of this research indicate that eye tracking metrics could be used within a constant process control stimulus environment (consistent visualization) in order to make interpretations of changes in: operator monitoring efficiency and behavior (such as top-down vs. bottom-up processing, and local vs. global attention), operator workload, and attention allocation areas through gaze points and ROIs.
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Alternative Displays Paper
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“Evaluating Alternate Visualization Techniques forOverview Displays in Process Control”
(Noah, Kim, Rothrock, & Tharanathan, 2014)
Alternative Displays Paper
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Objective:
The objective of this project was to evaluate the effectiveness of overview displays in terms of operator task performance and situation awareness. Three candidate overview displays where chosen:
1) the Calm Water representation being used by (BP),
2) the Heat Map representation being used by Sasol, and
3) the Visual Thesaurus display that was developed by Honeywell.
Heat MapCalm Water Visual Thesaurus
Alternative Displays Paper
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Alternative Displays Paper
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Alternative Displays Paper
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Factors LevelsOverview Displays(between-subject) Visual Thesaurus Heat Map Calm Water
Scenario Complexity
(within-subject)High Complexity Low Complexity ◄ (balanced)
Trial(within-subject) Trial 1 Trial 2
Table 1: Independent variables
Measures Metrics
Situation Awareness Level 2 (accuracy %)
Performance % correct clicks #false alarm clicks
Reaction Time (seconds)
Workload NASA TLX
Viewing Behavior % time in ROI
2nd Task Performance
Performance accuracy (%)
Table 2: Dependent variables
DOE:Repeated Measure Between-Subjects Design• 48 participants• actual operators
Alternative Displays Paper
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Results The Calm Water display resulted in better performance on the primary measures of:
Click accuracy Response time System Monitoring Task in MATB
Eye Tracking
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Can eye movement tell us what we are processing?
Thought formation occurs in conjunction with eye movement, and both are automatic behaviors (e.g., Nielsen, 1994; Rubin & Chisnell, 2008)
Eye metrics has been closely linked with cognitive processing• Fixations : attention allocation
(e.g., Ooms, De Maeyer, & Fack, 2014; Duchowski, 2007; Jacob & Karn, 2003; Poole & Ball, 2006)
• Fixation durations : interpretation difficulty (e.g., Duchowski, 2007; Holmqvist et al., 2011; Just & Carpenter, 1976)
• Scanpaths : cognitive strategies (e.g., De Vries, Hooge, & Verstraten, 2014; Kang & Landry, 2014)
• Pupil size : cognitive workload (e.g., Beatty, 1982; Szulewski, Fernando, Baylis, & Howes, 2014)
• Blinks : tension (e.g., Bruneau, Sasse, & McCarthy, 2002; Poole & Ball, 2005)
Eye Tracking
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How do we interpret visual stimuli?
Two basic cognitive processes happen: (Matlin, 2005)
• Attention [concentration of mental activity]• Object recognition• Attention occurs before object recognition
Two types of information processing: (Ooms, et al., 2014)
• Bottom-up [stimuli-driven]• Top-down [knowledge-driven]• Interpretation uses a combination of these two
Eye Tracking
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What are the current challenges with eye tracking?
“Look but not see” phenomenon: fixations ≠ perception (Salmon, Stanton, Walker, & Green, 2006; Triesch, Ballard, Hayhoe, & Sullivan, 2003)
High variability in eye measures between individuals• Within-subject experiments are strongly recommended
(Goldberg & Wichansky, 2003)
Eye Tracking
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Visual behavior in process control monitoring tasks?
Operators conduct systematic visual scanning to retrieve the information that is needed for maintaining situation awareness
(Willems, Allen, & Stein, 1999)
Overly complex tasks cause a loss of situation awareness (F. B. Bjørneseth, Renganayagalu, Dunlop, Homecker, & Komandur, 2012)
Eye Tracker Methodology
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Equipment
Arrington Research head-mounted binocular eye tracker
30 Hz
Data
Fixation events determined using a dispersion-based algorithm
Blinks and low quality data removed
Primary Eye Metrics
Fixations, saccades, and Regions of Interest (ROI)
Additional Metrics
Total fixations, total fixation duration, fixation duration mean, total saccade duration, saccade duration mean, fixation rate (per second), fixation/saccade duration ratio, mean saccade amplitude, and scanpath length
Experiment Plan
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How will we relate eye measures to the task?
1. Catalog eye metrics from literature
2. Collect and analyze data with respect to the cataloged eye metrics
3. Make interpretations based on literature
4. Compare interpretations with performance data
Eye Metrics
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Eye Movement Metric Interpretation Reference
Total Fixations
A higher number of fixations indicates less efficient search or more searching. (Goldberg & Kotval, 1999)
A higher number of fixations indicates more importance or a more noticeable area. (Poole, Ball, & Phillips, 2005)
Total Fixation Duration
Longer durations indicate more difficulty in extracting information. (Just & Carpenter, 1976)
Longer durations indicate deeper processing, or shallow processing (daydreaming). (Holmqvist, et al., 2011)
Longer durations indicate a more efficient strategy during fast moving stimuli. (Moraal, 1975)
Fixation Duration Mean Larger means indicate difficulty in interpreting or extracting of information. (Jacob & Karn, 2003)
Total Saccade Duration Longer durations indicate decreased processing. (Holmqvist, et al., 2011)Saccade Duration Mean Larger means indicate decreased processing. (Holmqvist, et al., 2011)
Fixation Rate Lower rates indicate higher workload or difficulty. (Nakayama, Takahashi, & Shimizu, 2002)
Fixation/Saccade Ratio Higher ratios indicate more information processing and searching. (Goldberg & Kotval, 1999)
Eye Metrics
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Eye Movement Metric Interpretation Reference
Scanpath Length Longer lengths indicate less efficient search. (Goldberg, Stimson, Lewenstein, Scott, & Wichansky, 2002)
Avg. Saccade Amplitude
Larger amplitudes indicate more efficient search. (Goldberg & Kotval, 1999)Larger amplitudes indicate attention is better drawn from a distance.
(Goldberg, et al., 2002; Inamdar & Pomplun, 2003)
Smaller amplitudes indicate more search difficulty. (Zelinsky & Sheinberg, 1997)
Local Scanpaths
Longer fixations and smaller saccade amplitudes. (Groner, Walder, & Groner, 1984)
Indicates bottom-up control, more focal processing. (Groner, et al., 1984)
Indicates processing which is used to determine ‘what’ is being observed.
(Unema, Pannasch, Joos, & Velichkovsky, 2005)
Global Scanpaths
Shorter fixations and larger saccade amplitudes. (Groner, et al., 1984)
Indicates top-down control, more ambient processing. (Groner, et al., 1984)
Indicates processing which is used to determine ‘where’ and ‘how’ of what is being observed. (Unema, et al., 2005)
Experiment Results
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1 of 2 [All Monitors]Eye Metric Sig. Effect Descriptive Stats F or X2 p
Total Fixations (#) complexity low(40): M=1136.4; SD=122.3high(41): M=1109.7; SD=118.8 F(1,34)=5.20 0.029
Total Fixation Duration (msec)
trial trial 1(40): M=262426; SD=43106trial 2(41): M=274063; SD=45195 F(1,34)=9.16 0.005
display
SC(30): M=272977; SD=27552HM(25): M=280616; SD=521 27VT(26): M=251111; SD=47981
F(2,72)=3.39 0.039
HM > VT Tukey's HSD < 0.05
Fixation Duration Mean (msec) display
SC(30): M=243.93; SD=20.32HM(25): M=247.70; SD=31.34VT(26): M=222.51; SD=22.62
F(2,34)=4.25 0.022
HM > VT Tukey's HSD < 0.05
Total Saccade Duration (msec) display
SC(30): M=265440; SD=31517HM(25): M=255129; SD=43939VT(26): M=290498; SD=40072
F(2,34)=3.10 0.057
VT > HM Tukey's HSD < 0.05
Table 3: Summary of analysis results from eye movement metrics [All Monitors].
Experiment Results
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2 of 2 [All Monitors]Eye Metric Sig. Effect Descriptive Stats F or X2 p
Fixation Rate (#/sec) complexity* displayHM with steepest slope:
low(12): M=2.1436; SD=0.1735 high(13): M=2.0643; SD=0.2127 F(2,34)=3.40 0.045
Fixation / Saccade Ratio*Kruskal-Wallis display
SC(30): median=1.0747HM(25): median=1.0953VT(26): median=0.9640
X2(2)=8.17 0.017
(SC; HM) > VT Mann-Whit. U < 0.05
Scanpath Length (normal units)*Kruskal-Wallis
display
SC(30): median=191.3HM(25): median=192.4VT(26): median=235.5
X2(2)=15.02 0.001
VT > (SC; HM) Mann-Whit. U < 0.05
Avg. Saccade Amplitude (arc deg)*Kruskal-Wallis
display
SC(30): median=0.1671HM(25): median=0.1667VT(26): median=0.2043
X2(2)=9.10 0.011
VT > (SC; HM) Mann-Whit. U < 0.05
Table 3: Summary of analysis results from eye movement metrics [All Monitors].
Experiment Results
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Table 4: Summary of analysis results from eye movement metrics [Overview - Single Monitor].
[Overview - Single Monitor]Eye Metric Sig. Effect Descriptive Stats F p
Total Fixation Duration (msec) trial trial 1(40): M=95308; SD=28821trial 2(41): M=106690; SD=36770 F(1,34)=11.32 0.002
Fixation Duration Mean (msec) display
SC(30): M=256.42; SD=29.24HM(25): M=250.49; SD=33.69VT(26): M=219.43; SD=23.25
F(2,34)=7.16 0.002
(SC; HM) > VT Tukey's HSD < 0.05
Fixation / Saccade Ratio display
SC(30): M=1.8106; SD=0.5130HM(25): M=1.6138; SD=0.4843VT(26): M=1.3620; SD=0.4052
F(2,34)=3.63 0.036
SC > VT Tukey's HSD < 0.05
Experiment Results
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Table 5: Summary of analysis results from eye movement metrics [Schematic - Single Monitor].
[Schematic - Single Monitor]Eye Metric Sig. Effect Descriptive Stats F p
Fixation Duration Mean (msec)
trial trial 1(40): M=228.35; SD=36.81trial 2(41): M=245.90; SD=38.47 F(1,34)=11.12 0.002
complexity low(40): M=228.94; SD=35.34high(41): M=245.32; SD=40.04 F(1,34)=9.27 0.004
Total Saccade Duration (msec) complexity low(40): M=34767; SD=20357
high(41): M=27185; SD=17801 F(1,34)=16.72 0.000
Saccade Duration Mean (msec) complexity low(40): M=139.85; SD=42.66
high(41): M=125.56; SD=36.50 F(1,34)=7.90 0.008
Fixation / Saccade Ratio
trial trial 1(40): M=1.895; SD=0.771trial 2(41): M=2.105; SD=0.800 F(1,34)=5.00 0.032
complexity low(40): M=1.846; SD=0.779high(41): M=2.153; SD=0.775 F(1,34)=12.07 0.001
Experiment Results
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Table 6: Summary of analysis results from eye movement metrics [MATB - Single Monitor].
[MATB - Single Monitor]Eye Metric Sig. Effect Descriptive Stats F p
Total Fixations (#)
trial trial 1(40): M=496.9; SD=119.1trial 2(41): M=447.9; SD=109.1
F(1,34)=11.37 0.002
display
SC(30): M=486.6; SD=117.1HM(25): M=514.6; SD=88.4VT(26): M=414.5; SD=119.2
F(2,34)=3.52 0.040
(SC; HM) > VT Tukey's HSD < 0.05
Total Fixation Duration (msec)
trial trial 1(40): M=114945; SD=34900trial 2(41): M=105275; SD=33584 F(1,34)=6.92 0.013
display
SC(30): M=115204; SD=32214HM(25): M=124036; SD=32349VT(26): M=90655; SD=30876
F(2,34)=4.28 0.021
(SC; HM) > VT Tukey's HSD < 0.05
Total Saccade Duration (msec) trial trial 1(40): M=87452; SD=21967
trial 2(41): M=79775; SD=22006 F(1,34)=6.48 0.016
Experiment Results
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Table 7: Summary of analysis results from eye movement metrics [transitions].
[transitions]Eye Metric Sig. Effect Descriptive Stats F p
Transitions Between Monitors (#)
complexity low(40): M=146.88; SD=46.09high(41): M=123.00; SD=35.82 F(1,34)=17.34 0.000
display
SC(30): M=142.97; SD=34.75HM(25): M=117.84; SD=37.51VT(26): M=141.70; SD=51.60
F(2,72)=2.97 0.058
(SC; VT) > HM *marginally Tukey's HSD < 0.05
Interpretations
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Table 8: Eye movement interpretations of experimental data for [All Monitors].
1 of 2 [All Monitors]
Metric factor Interpretation(s)
Total Fix. Duration trial During trial 2: more difficulty in extracting information (deeper processing)
-OR- more efficient search strategy during fast moving stimuli
Total Fixations complexity During low complexity: more searching or less efficient searching occurred
Fixation Rate
complexity * display
For HM, during high complexity: higher workload or difficulty experiencedFor SC & VT, low & high complexity: no indication of any change
Total Fixation Duration
display HM more difficulty in extracting information (deeper processing) -OR- more efficient search strategy during fast moving stimuli compared to VT
Fixation Dur. Mean display HM more difficulty in interpreting or extracting of information compared to VT
Interpretations
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Table 8: Eye movement interpretations of experimental data for [All Monitors].2 of 2 [All Monitors]
Metric factor Interpretation(s)
Total Saccade Duration
display VT decreased processing was experienced compared to HM
Fix. / Sac. Ratio display SC & HM increased processing and searching experienced compared to VT
Scanpath Length display VT experienced less efficient searching compared to SC & HM
Avg. Sac. Amplitude display VT experienced more efficient searching and better captured attention compared to
SC & HM
transitions complexity During low complexity: more transitions between monitors
transitions display SC & VT: more transitions between monitors compared to HM
Interpretations
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Table 9: Eye movement interpretations of experimental data for [Overview - Single Monitor].
[Overview - Single Monitor]
Metric factor Interpretation(s)
Total Fix. Duration trial During trial 2: more difficulty in extracting information (deeper processing)
-OR- more efficient search strategy during fast moving stimuli
Fixation Dur. Mean display SC & HM more difficulty in interpreting or extracting of information compared to VT
Fix. / Sac.Ratio display SC experienced more information processing and searching compared to VT
Interpretations
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Table 10: Eye movement interpretations of experimental data for [Schematic - Single Monitor].
[Schematic - Single Monitor]
Metric factor Interpretation(s)
Fixation Dur. Mean trial During trial 2: more difficulty in interpreting or extracting of information
Fix. / Sac. Ratio trial During trial 2: more information processing and searching
Fixation Dur. Mean complexity During high complexity: more difficulty in interpreting or extracting of information
Total Sac. Duration complexity During low complexity: decreased processing occurred
Saccade Dur. Mean complexity During low complexity: decreased processing occurred
Fix. / Sac. Ratio complexity During high complexity: more information processing and searching
Interpretations
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Table 11: Eye movement interpretations of experimental data for [MATB - Single Monitor].
[MATB - Single Monitor]
Metric factor Interpretation(s)
Total Fixations trial During trial 1: less efficient searching, more searching occurred
Total Fix. Duration trial During trial 1: more difficulty in extracting information (deeper processing)
Total Sac.Duration trial During trial 1: decreased processing occurred
Total Fixations display SC & HM less efficient searching, more searching occurred compared to VT
Total Fix. Duration display SC & HM more difficulty in extracting information (deeper processing) compared to
VT
Discussion
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What was found for the trial factor?
1. The data suggests that a more efficient search strategy was developed overall from trial 1 to trial 2
Overall, there is some evidence to support that several eye movement metrics (Total Fixations, Total Fixation Duration, Fixation Duration Mean, Total Saccade Duration, and Fixation/Saccade Ratio) could be used to gauge the degree of difficulty in information processing and the efficiency of search behavior for a simple process control monitoring task. This beneficial relationship may be best utilized for tasks which only require the monitoring of a single display, however the results here show promise for multi-display workstations as well. In a work environment, a baseline or comparison must first be established in order to detect significant variations within the metrics.
Discussion
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What was found for the complexity factor?
1. The data suggests that there is less difficulty in processing within low complexity, and resulted in increased Click Accuracy
Overall, there is some evidence to support that several eye movement metrics (Total Fixations, Fixation Duration Mean, Total Saccade Duration, Saccade Duration Mean, and Fixation / Saccade Ratio) could be used to gauge the degree of difficulty in interpreting visual information, the amount of processing that is happening, and the efficiency of searching. Furthermore, these metrics could potentially provide insight into the performance within a specific task. Similar to above, a baseline or comparison must first be established in order to detect significant variations within the metrics.
Discussion
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What was found for the display factor?
1. The data suggests that the Visual Thesaurus (VT) display seems to be the far better visualization out of the three. However, the Surface Chart (SC) display had better performance
2. It also suggests that the Heat Map (HM) display is the worst for the task, and this is in agreement with many of the performance metrics
Overall, using eye metrics to compare different visual stimuli (visualizations) is difficult because each display presents the operator with significantly different stimuli. It is recommended that these comparisons are only conducted within the same task (same visualization).
Conclusions
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In sum…
1. Eye tracking measures were sensitive to both trial (experience) and complexity (difficulty)
2. Eye tracking measures were inconsistent to the performance results between displays
3. Eye tracking measures should be kept within-subject and within constant scenes
4. Process control applications of eye tracking could take advantage of monitoring operator’s behavior in order to determine if there are significant changes in cognitive processing (based on both experience level and task difficulty)
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