A Real-time System for Head Tracking and Pose Estimation for Driver’s Alertness - Robotics Institute Carnegie Mellon University

A Real-time System for Head Tracking and Pose Estimation for Driver’s Alertness

Z. Zhang, M. Kim, F. De la Torre, and W. Zhang
Workshop Paper, ECCV '10 Workshop on Signal, Gesture and Activity, pp. 329 - 341, September, 2010

Abstract

Driver's visual attention provides important clues about his/ her activities and awareness. To monitor driver's awareness, this paper proposes a real-time
person-independent head tracking and pose estimation system using a monochromatic camera. The tracking and head-pose estimation tasks are formulated as regression problems. Three regression methods are proposed: (i) individual mapping on images for head tracking, (ii) direct mapping to subspace for head tracking, which predicts a subspace from one sample, and (iii) semantic piecewise regression for head-pose estimation. The approaches are evaluated on standard databases, and on several videos collected in vehicle environments.

BibTeX

@workshop{Zhang-2010-120973,
author = {Z. Zhang and M. Kim and F. De la Torre and W. Zhang},
title = {A Real-time System for Head Tracking and Pose Estimation for Driver’s Alertness},
booktitle = {Proceedings of ECCV '10 Workshop on Signal, Gesture and Activity},
year = {2010},
month = {September},
pages = {329 - 341},
}