Title of article
Adaptive Snakes Using the EM Algorithm
Author/Authors
J. C. Nascimento and J. S. Marques، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2005
Pages
9
From page
1678
To page
1686
Abstract
Deformable models (e.g., snakes) perform poorly in
many image analysis problems. The contour model is attracted by
edge points detected in the image. However, many edge points do
not belong to the object contour, preventing the active contour from
converging toward the object boundary. A new algorithm is proposed
in this paper to overcome this difficulty. The algorithm is
based on two key ideas. First, edge points are associated in strokes.
Second, each stroke is classified as valid (inlier) or invalid (outlier)
and a confidence degree is associated to each stroke. The expectation
maximization algorithm is used to update the confidence degrees
and to estimate the object contour. It is shown that this is
equivalent to the use of an adaptive potential function which varies
during the optimization process. Valid strokes receive high confidence
degrees while confidence degrees of invalid strokes tend to
zero during the optimization process. Experimental results are presented
to illustrate the performance of the proposed algorithm in
the presence of clutter, showing a remarkable robustness.
Keywords
snakes. , Adaptive potential , contour estimation , deformablemodels , expectation maximization (EM) algorithm , robust estimation
Journal title
IEEE TRANSACTIONS ON IMAGE PROCESSING
Serial Year
2005
Journal title
IEEE TRANSACTIONS ON IMAGE PROCESSING
Record number
397175
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