Title of article :
Conditional Filters for Image Sequence-Based Tracking—Application to Point Tracking
Author/Authors :
E. Arnaud، نويسنده , , E. Mémin، نويسنده , , and B. Cernuschi-Fr?as، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
In this paper, a new conditional formulation of classical
filtering methods is proposed. This formulation is dedicated
to image sequence-based tracking. These conditional filters allow
solving systems whose measurements and state equation are estimated
from the image data. In particular, the model that is considered
for point tracking combines a state equation relying on the
optical flow constraint and measurements provided by a matching
technique. Based on this, two point trackers are derived. The first
one is a linear tracker well suited to image sequences exhibiting
global-dominant motion. This filter is determined through the use
of a new estimator, called the conditional linear minimum variance
estimator. The second one is a nonlinear tracker, implemented from
a conditional particle filter. It allows tracking of points whose motion
may be only locally described. These conditional trackers significantly
improve results in some general situations. In particular,
they allow for dealing with noisy sequences, abrupt changes of trajectories,
occlusions, and cluttered background.
Keywords :
Correlation measurement , Gating , minimum varianceestimator , optimal importance function , point tracking , robust motion estimation , stochastic filtering. , Particle filtering
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING