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A Comparison of Features for Regression-based Driver Head Pose Estimation under Varying Illumination Conditions

Walger, D.J.; Breckon, T.P.; Gaszczak, A.; Popham, T.

A Comparison of Features for Regression-based Driver Head Pose Estimation under Varying Illumination Conditions Thumbnail


Authors

D.J. Walger

A. Gaszczak

T. Popham



Abstract

Head pose estimation provides key information about driver activity and awareness. Prior comparative studies are limited to temporally consistent illumination conditions under the assumption of brightness constancy. By contrast the illumination conditions inside a moving vehicle vary considerably with environmental conditions. In this study we present a base comparison of three features for head pose estimation, via support vector machine regression, based on Histogram of Oriented Gradient (HOG) features, Gabor filter responses and Active Shape Model (ASM) landmark features. These, reputedly illumination invariant, are presented through a common face localization framework from which we estimate driver head pose in two degrees-of-freedom and compare against a baseline approach for recovering head pose via weak perspective geometry. Evaluation is performed over a number of invehicle sequences, exhibiting uncontrolled illumination variation, in addition to ground truth data-sets, with controlled illumination changes, upon which we achieve a minimal ∼12° and ∼15° mean error in pitch and yaw respectively via ASM landmark features.

Citation

Walger, D., Breckon, T., Gaszczak, A., & Popham, T. (2014). A Comparison of Features for Regression-based Driver Head Pose Estimation under Varying Illumination Conditions. In Proc. International Workshop on Computational Intelligence for Multimedia Understanding (1-5). https://doi.org/10.1109/IWCIM.2014.7008805

Conference Name Proc. International Workshop on Computational Intelligence for Multimedia Understanding
Publication Date 2014
Deposit Date Dec 9, 2014
Publicly Available Date Feb 4, 2015
Publisher Institute of Electrical and Electronics Engineers
Pages 1-5
Book Title Proc. International Workshop on Computational Intelligence for Multimedia Understanding
DOI https://doi.org/10.1109/IWCIM.2014.7008805
Keywords head pose, driver head tracking, gaze tracking, pose estimation regression
Public URL https://durham-repository.worktribe.com/output/1154715
Publisher URL https://breckon.org/toby/publications/papers/walger14headpose.pdf
Related Public URLs http://www.durham.ac.uk/toby.breckon/publications/papers/walger14headpose.pdf

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