Visible to the public Baseline face detection, head pose estimation, and coarse direction detection for facial data in the SHRP2 naturalistic driving study

TitleBaseline face detection, head pose estimation, and coarse direction detection for facial data in the SHRP2 naturalistic driving study
Publication TypeConference Paper
Year of Publication2015
AuthorsPaone, J., Bolme, D., Ferrell, R., Aykac, D., Karnowski, T.
Conference Name2015 IEEE Intelligent Vehicles Symposium (IV)
Date Publishedjun
Keywordsautomated feature extraction algorithms, baseline face detection, Cameras, coarse direction detection, driver information systems, Estimation, Face, Face detection, face recognition, head pose validation data set, illumination conditions, naturalistic driving study, NDS, open source face pose estimation algorithms, pose estimation, pubcrawl170113, recording equipment, road safety, SHRP2 naturalistic driving study, Strategic Highway Research Program 2, transportation community, Vehicles, Videos
Abstract

Keeping a driver focused on the road is one of the most critical steps in insuring the safe operation of a vehicle. The Strategic Highway Research Program 2 (SHRP2) has over 3,100 recorded videos of volunteer drivers during a period of 2 years. This extensive naturalistic driving study (NDS) contains over one million hours of video and associated data that could aid safety researchers in understanding where the driver's attention is focused. Manual analysis of this data is infeasible; therefore efforts are underway to develop automated feature extraction algorithms to process and characterize the data. The real-world nature, volume, and acquisition conditions are unmatched in the transportation community, but there are also challenges because the data has relatively low resolution, high compression rates, and differing illumination conditions. A smaller dataset, the head pose validation study, is available which used the same recording equipment as SHRP2 but is more easily accessible with less privacy constraints. In this work we report initial head pose accuracy using commercial and open source face pose estimation algorithms on the head pose validation data set.

URLhttps://ieeexplore.ieee.org/document/7225682
DOI10.1109/IVS.2015.7225682
Citation Keypaone_baseline_2015