Title of article :
Figure-Ground Segmentation From Occlusion
Author/Authors :
P. M. Q. Aguiar and J. M. F. Moura، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
Layered video representations are increasingly popular;
see [2] for a recent review. Segmentation of moving objects
is a key step for automating such representations. Current motion
segmentation methods either fail to segment moving objects in lowtextured
regions or are computationally very expensive. This paper
presents a computationally simple algorithm that segments moving
objects, even in low-texture/low-contrast scenes. Our method infers
the moving object templates directly from the image intensity
values, rather than computing the motion field as an intermediate
step. Our model takes into account the rigidity of the moving object
and the occlusion of the background by the moving object.We
formulate the segmentation problem as the minimization of a penalized
likelihood cost function and present an algorithm to estimate
all the unknown parameters: the motions, the template of the
moving object, and the intensity levels of the object and of the background
pixels. The cost function combines a maximum likelihood
estimation term with a term that penalizes large templates. The
minimization algorithm performs two alternate steps for which we
derive closed-form solutions. Relaxation improves the convergence
even when low texture makes it very challenging to segment the
moving object from the background. Experiments demonstrate the
good performance of our method.
Keywords :
Penalized likelihood , segmentation. , Layered video representations , Motion , Occlusion , Rigidity
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING