professor: liu student: ruby
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Older Driver Failures of Attention at Intersections: Using Change Blindness Methods to Assess Turn Decision Accuracy. Professor: Liu Student: Ruby. Motivation. - PowerPoint PPT PresentationTRANSCRIPT
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Older Driver Failures of Attention at Intersections:
Using Change Blindness Methods to Assess Turn Decision Accuracy
Professor: Liu
Student: Ruby
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MotivationMotivation
– About on half of all driver fatalities for those 80 years of age and older are at intersections, compared with 23% for drivers younger than 50 years.
– Once older drivers are involved in an intersection accident, are failure to yield right of way and violation of traffic controls.
– Failures of perception ,attention, memory, cognition and action.
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PurposePurpose
– Research that seeks to understand and predict why intersection accidents occur in the older drivers.
– Using the MFM (modified flicker method) to determine the effects of time constrains on the performance of younger and older drivers’ decision making at intersections.
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References (1/2)References (1/2)
– Change blindness is defined as the inability to detect changes made to an object or a scene during a saccade, flicker, blink, or movie cut (O’Regan, Rensink, & Clark, 1999) .
– The blank screen separating the two images simulates a saccade and is used to mask the appearance of new objects in the scene (Rensink et al., 1997).
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References(2/2)References(2/2)
– When brief blank fields are placed between alternating displays of an original and modified scene, which is called the flicker technique (O’ Regan et al., 1999; Rensink et al., 2000).
– These masks are effective even when they only partially occlude the scene (O’Regan et al.,1999)
Summary:– It’s not clear from past research whether age-related
differences might be reduce when the task draws upon previous experience.
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MethodMethod• Participants:
– Young 18-25 years, M=22.– Middle-aged 26-64 years, M=39– Young-old 65-73 years, M=69– Old-old 74+ years, M=78
Young
(18-25)
Middle-aged
(26-64)
Young-old
(65-73)
Old-old
(74+)
Men 8 8 8 8
Women 8 8 8 6
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MethodMethod
• Materials:– A Nikon CoolPix 950 digital camera and manipulate
d using Adobe Photoshop 5.5 on a Macintosh G3 computer.
– The application ran on a 933 MHz Pentium III PC connected to an Epson data projector.
– Only the brake and accelerator inputs were recorded.
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MethodMethod
• Materials: [driving images]– Photoshop to create sets of paired images: Image A (u
nmanipulated) and Image A’ (manipulated) have 42 image pairs.
• Training image : 6• Experiment image : 36 (26 included changi
ng features ; 10 didn’t contain any changes)
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MethodMethod
• Materials: [modified change blindness paradigm]– MFM creates a situation in which drivers have a limi
ted time to decide whether or not an intended direction of travel is safe.
– For example : see figure 1
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MethodMethod• Procedure: Step1: Using the questionnaire to examine participant’s ba
ckground.
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MethodMethod
• Procedure: Step2: Participants received a short verbal overview of the t
asks and completed six practice trials. Practice trials included all three directions of travel. (Training)
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MethodMethod• Procedure: Step3: Drivers were presented with 36 intersectio
ns that varied in complexity and type of change present. (Trial)
-For half of the trials, participants had 5 s to observe the scenes, and in the other half they had 8 s. (random)
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MethodMethod• Procedure: Step4: To ask four questions after the trials :
1. How confident are you in your decision to go or
not to go ? 2. State all of the elements (lights, other vehicles, si
gns, pedestrians) of the traffic scene that influenced your decision from the most important to the least important.
3. Did you notice anything changing in the images that you saw ?
4. Did you make any assumptions about what you saw ?
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ResultsResults• Logistic Regression: - The two predictors used were age and time, and the outco
me variable was decision accuracy.
-Age was used as a continuous predictor because of
insufficient cell sizes across all age groups when as
categorical variable.
-Unique characteristics of each intersection (traffic control device, vehicles present, pedestrians).
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ResultsResults
• Logistic Regression: - Of the 36 logistic regression analysis, 14 provided
statistically significant predictions of accuracy.
-Age : 10 intersections.
Time : 1 intersection.
Age + Time : 3 intersection.
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ResultsResults
Logistic Regression: Intersection decision accuracy with changing pedestrians :
Age : 5, 8, 9,12, 24, 29, 35 (intersection)
Time : 12, 24 (intersection)
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ResultsResults
Logistic Regression: Intersection decision accuracy with traffic control devices :
Age : 15, 21 (intersection)
Time : 13 (intersection)
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ResultsResults
Logistic Regression: Intersection decision accuracy with changing vehicles :
Age : 23, 31 (intersection)
Time : none (intersection)
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ResultsResults
Logistic Regression: Intersection without changes :
Age : 2, 27 (intersection)
Time : 27 (intersection)
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DiscussionDiscussion
• This study used a MFM (modified flicker method) to assess the effects of age and time on intersection turn decision accuracy.
• Young and middle-aged participants were more accurate in their decision than young-old and old-old age groups.
• Older drivers had especially low accuracy scores for the pedestrian events.
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DiscussionDiscussion• Traffic sign changes were also more difficult to
detect with age of older.
• Older participants tended to miss relevant vehicles that were relatively large and conspicuous.
• Older drivers appeared to rely heavily on the traffic control devices in the intersections, often to the exclusion of other important object (pedestrians, vehicle)