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Distributed surveillance |
Objective
In this project we develop techniques
for tracking multiple objects with multiple cameras. In particular, we
focus on problems where the cameras are sparsely distributed over a
wide area (think of an airport, shopping mall or a motorway). In this
cases, the effective fields of view the cameras remain disjoint. When
an object (like a person or a car) leaves the view of some camera, we
temporarily loose track of it. The key goal of this project is
re-identification of that object whenever it later on reappears in the
view of some other camera. In this way we can recover the global
trajectories of objects in the considered area.
Research group members
drs. W. Zajdel
dr. ir. B.Kröse
dr. A.T. Cemgil
Funding
This project is founded by Stichting Technische Wetenschappen (STW)
Research Achievements
We have developed an online data association algorithm based on
Bayesian inference in Infinite Gaussian Mixture Models (also known as
Dirichlet Process Mixture Models). When an object leaves the view of
one camera, and after some time, enters the view of another camera, we
want to associate the two local trajectories with a single global
trajectory. Each local trajectory consists of multiple frames,
therefore we compress it into a set of features that describe
appearance of the object (like color distribution) and spatio-temporal
features (like direction, or entry/leave timestamps). The
feature-based association is a common problem in multi-object
tracking. However, the standard methods are not immediately applicable
as the motion of object is not smooth (because of the gap between
fields of view). See the demo
or read more in the ICPR 2004
paper.
More information
drs. W. Zajdel Home page
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