Title
A Camera Network Tracking (CamNeT) Dataset and Performance Baseline
Abstract
In this paper, we propose a novel Non-Overlapping Camera Network Tracking Dataset (CamNeT) for evaluating multi-target tracking algorithms. The dataset is composed of five to eight cameras covering both indoor and outdoor scenes at a university. This dataset consists of six scenarios. Within each scenario are challenges relevant to lighting changes, complex topographies, crowded scenes, and changing grouping dynamics. Persons with predefined trajectories are combined with persons with random trajectories. Ground truth data for predefined trajectories is provided for each camera. Also, a baseline multi-target tracking system is presented. The tracking results using the baseline system are provided, which can be compared with future works. The work provides a comprehensive multicamera dataset for performance evaluation in this challenging application domain, as well as an initial set of results.
Year
DOI
Venue
2015
10.1109/WACV.2015.55
WACV
Keywords
Field
DocType
video signal processing,ground truth data,grouping dynamics,camnet dataset,outdoor scenes,complex topographies,nonoverlapping camera network tracking dataset,target tracking,video cameras,indoor scenes,crowded scenes,multitarget tracking algorithms,predefined trajectories,university,baseline multitarget tracking system,video databases,random trajectories,performance baseline,lighting changes,trajectory,lighting
Computer vision,Computer science,Tracking system,Camera network,Ground truth,Video tracking,Application domain,Artificial intelligence,Baseline system,Trajectory
Conference
ISSN
Citations 
PageRank 
2472-6737
13
0.59
References 
Authors
10
4
Name
Order
Citations
PageRank
Shu Zhang1383.32
Elliot Staudt2130.59
Tim Faltemier3130.59
Amit K. Roy Chowdhury4115373.96