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Research Seminar - October 15, 2004
Applications of visual tracking
Dr Ian Reid
Department of Engineering Science,
University of Oxford, UK
11am Friday 15th October, 2004
Computer Science & Software Engineering
Seminar Room 1.24
Abstract:
Applications of visual tracking
The talk will comprise two parts discussing different applications of
visual tracking: (i) human motion capture; (ii) visual localisation
and mapping.
PART I: Human Motion Capture aims to determine the 3D pose and joint
parameters of a moving person for subsequent use in a variety of
applications ranging from gait analysis for orthopeadic rehabilition
to reanimation for computer games. A standard approach fixes markers
to a subject then tracks these in multiple, hardware synchronised and
accurately calibrated cameras.
In the first part of this seminar I will discuss a system able to
perform robust, markerless, visual tracking with an articulated body
model. The approach to searching through the high-dimensional model
configuration space is an algorithm called annealed particle filtering
which finds the best fit to image data via multi-layer propagation
of a stochastic particle set. This algorithm efficiently searches the
configuration space without the need for strong dynamical models. I
will describe the algorithm, and present results for a variety of agile
motions.
PART II: As a video camera moves through the world, the image
trajectories of static scene features provide constraints on both
their locations in the world and on the motion of the camera itself.
Thus, a video camera module connected to a computer can theoretically
serve as a localisation device by identifying and mapping
previously-unknown natural visual landmarks in the surroundings.
Though the theory of structure-from-motion is well understood, there
remain various problems to overcome in any practical implementation.
In the second part of the seminar I will describe a system that
automatically acquires, tracks and maps visual features, and uses
these to localise the camera sequentially in real time (i.e. 30Hz).
The system is characterised by (i) a sparse, high-quality map of
visual features; (ii) an Extended Kalman Filter whose state represents
the instantaneous estimates of 3D feature and camera locations; (iii)
uncertainty-guided active feature search for robust tracking.
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