Title :
Adaptive earth movers distance-based Bayesian multi-target tracking
Author :
Kumar, Pranaw ; Dick, Anthony
Author_Institution :
Sch. of Math. & Stat., Univ. of South Australia, Adelaide, SA, Australia
Abstract :
This study describes a complete system for multiple-target tracking in image sequences. The target appearance is represented as a set of weighted clusters in colour space. This is in contrast to the more typical use of colour histograms to model target appearance. The use of clusters allows a more flexible and accurate representation of the target, which demonstrates the benefits for tracking. However, it also introduces a number of computational difficulties, as calculating and matching cluster signatures are both computationally intensive tasks. To overcome this, the authors introduce a new formulation of incremental medoid-shift clustering that operates faster than mean shift in multi-target tracking scenarios. This matching scheme is integrated into a Bayesian tracking framework. Particle filters, a special case of Bayesian filters where the state variables are non-linear and non-Gaussian, are used in this study. An adaptive model update procedure is proposed for the cluster signature representation to handle target changes with time. The model update procedure is demonstrated to work successfully on a synthetic dataset and then on real datasets. Successful tracking results are shown on public datasets. Both qualitative and quantitative evaluations have been carried out to demonstrate the improved performance of the proposed multi-target tracking system. A higher tracking accuracy in long image sequences has been achieved compared to other standard tracking methods.
Keywords :
Bayes methods; image matching; image representation; image sequences; particle filtering (numerical methods); target tracking; Bayesian fllters; Bayesian tracking framework; Particle fllters; adaptive earth mover distance-based Bayesian multitarget tracking; adaptive model update procedure; colour histogram; image sequences; incremental medoid-shift clustering formulation; matching cluster signature scheme; model target appearance; nonGaussian state variable; nonlinear state variable; qualitative evaluation; quantitative evaluation; standard tracking method; synthetic dataset;
Journal_Title :
Computer Vision, IET
DOI :
10.1049/iet-cvi.2011.0223