Title of article :
Flexible Skew-Symmetric Shape Model for Shape Representation, Classification, and Sampling
Author/Authors :
Baloch، نويسنده , , S. H.، نويسنده , , Krim، نويسنده , , H.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Abstract :
Skewness of shape data often arises in applications
(e.g., medical image analysis) and is usually overlooked in statistical
shape models. In such cases, a Gaussian assumption is unrealistic
and a formulation of a general shape model which accounts
for skewness is in order. In this paper, we present a novel statistical
method for shape modeling, which we refer to as the flexible
skew-symmetric shape model (FSSM). The model is sufficiently
flexible to accommodate a departure from Gaussianity of the data
and is fairly general to learn a “mean shape” (template), with a potential
for classification and random generation of new realizations
of a given shape. Robustness to skewness results from deriving the
FSSM from an extended class of flexible skew-symmetric distributions.
In addition, we demonstrate that the model allows us to extract
principal curves in a point cloud. The idea is to view a shape
as a realization of a spatial random process and to subsequently
learn a shape distribution which captures the inherent variability
of realizations, provided they remain, with high probability, within
a certain neighborhood range around a mean. Specifically, given
shape realizations, FSSM is formulated as a joint bimodal distribution
of angle and distance from the centroid of an aggregate of
random points. Mean shape is recovered fromthe modes of the distribution,
while the maximum likelihood criterion is employed for
classification.
Keywords :
Shape classification , sampling , Flexible skew-symmetric distributions (FSSM) , Shape modeling , template learning. , Principal curves
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING