Title :
A Probabilistic Framework for Joint Pedestrian Head and Body Orientation Estimation
Author :
Flohr, Fabian ; Dumitru-Guzu, Madalin ; Kooij, Julian F. P. ; Gavrila, Dariu M.
Author_Institution :
R&D, Environ. Perception Dept., Daimler, Ulm, Germany
Abstract :
We present a probabilistic framework for the joint estimation of pedestrian head and body orientation from a mobile stereo vision platform. For both head and body parts, we convert the responses of a set of orientation-specific detectors into a (continuous) probability density function. The parts are localized by means of a pictorial structure approach, which balances part-based detector responses with spatial constraints. Head and body orientations are estimated jointly to account for anatomical constraints. The joint single-frame orientation estimates are integrated over time by particle filtering. The experiments involved data from a vehicle-mounted stereo vision camera in a realistic traffic setting; 65 pedestrian tracks were supplied by a state-of-the-art pedestrian tracker. We show that the proposed joint probabilistic orientation estimation framework reduces the mean absolute head and body orientation error up to 15° compared with simpler methods. This results in a mean absolute head/body orientation error of about 21°/19°, which remains fairly constant up to a distance of 25 m. Our system currently runs in near real time (8-9 Hz).
Keywords :
cameras; object detection; particle filtering (numerical methods); pedestrians; probability; stereo image processing; anatomical constraints; body orientation estimation; frequency 8 Hz to 9 Hz; joint pedestrian head estimation; joint probabilistic orientation estimation framework; joint single-frame orientation estimates; mean absolute head-body orientation error; mobile stereo vision platform; orientation-specific detectors; part-based detector responses; particle filtering; pedestrian tracks; pictorial structure approach; probability density function; vehicle-mounted stereo vision camera; Detectors; Estimation; Head; Joints; Magnetic heads; Probabilistic logic; Shape; Active pedestrian safety; computer vision; pose estimation; social robotics;
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
DOI :
10.1109/TITS.2014.2379441