DocumentCode :
1386846
Title :
Processing of Eye/Head-Tracking Data in Large-Scale Naturalistic Driving Data Sets
Author :
Ahlstrom, Christer ; Victor, Trent ; Wege, Claudia ; Steinmetz, Erik
Author_Institution :
Swedish Nat. Road & Transp. Res. Inst., Linkoping, Sweden
Volume :
13
Issue :
2
fYear :
2012
fDate :
6/1/2012 12:00:00 AM
Firstpage :
553
Lastpage :
564
Abstract :
Driver distraction and driver inattention are frequently recognized as leading causes of crashes and incidents. Despite this fact, there are few methods available for the automatic detection of driver distraction. Eye tracking has come forward as the most promising detection technology, but the technique suffers from quality issues when used in the field over an extended period of time. Eye-tracking data acquired in the field clearly differs from what is acquired in a laboratory setting or a driving simulator, and algorithms that have been developed in these settings are often unable to operate on noisy field data. The aim of this paper is to develop algorithms for quality handling and signal enhancement of naturalistic eye- and head-tracking data within the setting of visual driver distraction. In particular, practical issues are highlighted. Developed algorithms are evaluated on large-scale field operational test data acquired in the Sweden-Michigan Field Operational Test (SeMiFOT) project, including data from 44 unique drivers and more than 10 000 trips from 13 eye-tracker-equipped vehicles. Results indicate that, by applying advanced data-processing methods, sensitivity and specificity of eyes-off-road glance detection can be increased by about 10%. In conclusion, postenhancement and quality handling is critical when analyzing large databases with naturalistic eye-tracking data. The presented algorithms provide the first holistic approach to accomplish this task.
Keywords :
driver information systems; eye; object tracking; road accidents; road safety; signal processing; very large databases; SeMiFOT project; Sweden-Michigan field operational test; crashes; detection technology; driver distraction automatic detection; driver inattention; eye-tracker-equipped vehicle; eye/head-tracking data processing; eyes-off-road glance detection; incidents; large database; large-scale naturalistic driving data set; naturalistic eye-and head-tracking data; quality handling; sensitivity; signal enhancement; visual driver distraction; Dispersion; Interpolation; Reliability; Roads; Smoothing methods; Vehicles; Visualization; Data processing; driver distraction; eye tracking; naturalistic data;
fLanguage :
English
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
1524-9050
Type :
jour
DOI :
10.1109/TITS.2011.2174786
Filename :
6093970
Link To Document :
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