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User aid-based evolutionary computation for optimal parameter setting of image enhancement and segmentation

Applications of imaging and image processing become a part of our daily life
and find their crucial way in real-world areas. Accordingly, the corresponding
techniques get more and more complicated.
Many tasks are recognizable for a image processing chain, such as, filtering, color
balancing, enhancement, segmentation, and post processing. Generally speaking,
all of the image processing techniques need a control parameter setting. The better
these parameters are set the better results can be achieved. Usually, these parameters
are real numbers so search space is really large and brute-force searching
is impossible or at least very time consuming. Therefore, the optimal setting of
the parameters is an essential requirement to obtain desirable results. Obviously,
we are faced with an optimization problem, which its complexity depends on the
number of the parameters to be optimized and correlation among them.
By reviewing the optimization methods, it can be understood that metaheuristic
algorithms are the best candidates for these kind of problems. Metaheuristic
algorithms are iterative approaches which can search very complex large spaces to
come up with an optimal or close to optimal solution(s). They are able to solve
black-box global optimization problems which are not solvable by classic mathematical
methods.
The first part of this thesis optimizes the control parameters for an eye-illusion,
image enhancement, and image thresholding tasks by using an interactive evolutionary
optimization approach. Eye illusion and image enhancement are subjective
human perception-based issues, so, there is no proposed analytical fitness function
for them. Their optimization is only possible through interactive methods. The second
part is about setting of active contour (snake) parameters. The performance
of active contours (snakes) is sensitive to its eight correlated control parameters
which makes the parameter setting problem complex to solve. In this work, wehave tried to set the parameters to their optimal values by using a sample segmented
image provided by an expert. As our case studies, we have used breast
ultrasound, prostate ultrasound, and lung X-ray medical images. The proposed
schemes are general enough to be investigated with other optimization methods
and also image processing tasks. The achieved experimental results are promising
for both directions, namely, interactive-based image processing and sample-based
medical image segmentation. / UOIT

Identiferoai:union.ndltd.org:LACETR/oai:collectionscanada.gc.ca:OOSHDU.10155/209
Date01 December 2011
CreatorsDarvish, Arman
ContributorsRahnamayan, Shahryar
Source SetsLibrary and Archives Canada ETDs Repository / Centre d'archives des thèses électroniques de Bibliothèque et Archives Canada
LanguageEnglish
Detected LanguageEnglish
TypeThesis

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