Multitarget Tracking with Split and Merged Measurements
Abstract
In many multitarget tracking applications in computer
vision, a detection algorithm provides locations of potential
targets. Subsequently, the measurements are associated
with previously estimated target trajectories
in a data association step. The output of the detector
is often imperfect and the detection data may include
multiple, split measurements from a single target
or a single merged measurement from several targets.
To address this problem, we introduce a multiple
hypothesis tracker for interacting targets that generate
split and merged measurements. The tracker is based on
an efficient Markov chain Monte Carlo (MCMC) based
auxiliary variable particle filter. The particle filter is
Rao-Blackwellized such that the continuous target state
parameters are estimated analytically, and an MCMC
sampler generates samples from the large discrete space
of data associations. In addition, we include experimental
results in a scenario where we track several interacting
targets that generate these split and merged measurements.