Title :
Monocular 3-D Gait Tracking in Surveillance Scenes
Author :
Rogez, Gregory ; Rihan, Jonathan ; Guerrero, J.J. ; Orrite, Carlos
Author_Institution :
Aragon Inst. for Eng. Res. (I3A), Univ. of Zaragoza, Zaragoza, Spain
Abstract :
Gait recognition can potentially provide a noninvasive and effective biometric authentication from a distance. However, the performance of gait recognition systems will suffer in real surveillance scenarios with multiple interacting individuals and where the camera is usually placed at a significant angle and distance from the floor. We present a methodology for view-invariant monocular 3-D human pose tracking in man-made environments in which we assume that observed people move on a known ground plane. First, we model 3-D body poses and camera viewpoints with a low dimensional manifold and learn a generative model of the silhouette from this manifold to a reduced set of training views. During the online stage, 3-D body poses are tracked using recursive Bayesian sampling conducted jointly over the scene´s ground plane and the pose-viewpoint manifold. For each sample, the homography that relates the corresponding training plane to the image points is calculated using the dominant 3-D directions of the scene, the sampled location on the ground plane and the sampled camera view. Each regressed silhouette shape is projected using this homographic transformation and is matched in the image to estimate its likelihood. Our framework is able to track 3-D human walking poses in a 3-D environment exploring only a 4-D state space with success. In our experimental evaluation, we demonstrate the significant improvements of the homographic alignment over a commonly used similarity transformation and provide quantitative pose tracking results for the monocular sequences with a high perspective effect from the CAVIAR dataset.
Keywords :
Bayes methods; gait analysis; image matching; image motion analysis; image sampling; image sequences; learning (artificial intelligence); natural scenes; pose estimation; video surveillance; 3-D body pose model; 3-D body pose tracking; 3-D human walking pose tracking; 4-D state space; CAVIAR dataset; biometric authentication; dominant 3-D directions; gait recognition systems; ground plane; homographic alignment; homographic transformation; image points; likelihood estimation; location sampling; low-dimensional manifold; monocular 3-D gait tracking; monocular sequences; pose-viewpoint manifold; recursive Bayesian sampling; sampled camera view; silhouette shape regression; similarity transformation; training plane; view-invariant monocular 3-D human pose tracking methodology; Cameras; Legged locomotion; Manifolds; Shape; Surveillance; Tracking; Training; 3-D body pose; monocular gait tracking; particle filtering; video surveillance; view invariance;
Journal_Title :
Cybernetics, IEEE Transactions on
DOI :
10.1109/TCYB.2013.2275731