Title
Stereo person tracking with adaptive plan-view templates of height and occupancy statistics
Abstract
As the cost of computing per-pixel depth imagery from stereo cameras in real time has fallen rapidly in recent years, interest in using stereo vision for person tracking has greatly increased. Methods that attempt to track people directly in these ‘camera-view’ depth images are confronted by their substantial amounts of noise and unreliable data. Some recent methods have therefore found it useful to first compute overhead, ‘plan-view’ statistics of the depth data, and then track people in images of these statistics. We describe a new combination of plan-view statistics that better represents the shape of tracked objects and provides a more robust substrate for person detection and tracking than prior plan-view algorithms. We also introduce a new method of plan-view person tracking, using adaptive statistical templates and Kalman prediction. Adaptive templates provide more detailed models of tracked objects than prior choices such as Gaussians, and we illustrate that the typical problems with template-based tracking in camera-view images are easily avoided in a plan-view framework. We compare results of our method with those for techniques using different plan-view statistics or person models, and find our method to exhibit superior tracking through challenging phenomena such as complex inter-person occlusions and close interactions. Reasonable values for most system parameters may be derived from physically measurable quantities such as average person dimensions.
Year
DOI
Venue
2004
10.1016/j.imavis.2003.07.009
Image and Vision Computing
Keywords
Field
DocType
Person tracking,Plan-view statistics,Stereo depth images,Adaptive template,Kalman filter
Stereo cameras,Computer vision,Pattern recognition,Measure (mathematics),Stereopsis,Kalman filter,Person detection,Occupancy,Artificial intelligence,Template,Statistics,Mathematics
Journal
Volume
Issue
ISSN
22
2
0262-8856
Citations 
PageRank 
References 
58
2.79
13
Authors
1
Name
Order
Citations
PageRank
Michael Harville136935.55