Active contours driven by local and global fitted image models for image segmentation robust to intensity inhomogeneity.

This paper presents a region-based active contour method for the segmentation of intensity inhomogeneous images using an energy functional based on local and global fitted images. A square image fitted model is defined by using both local and global fitted differences. Moreover, local and global sig...

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Main Authors: Farhan Akram, Miguel Angel Garcia, Domenec Puig
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5380353?pdf=render
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spelling doaj-9f361462758b42de894a3170c2932f052020-11-25T01:22:53ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-01124e017481310.1371/journal.pone.0174813Active contours driven by local and global fitted image models for image segmentation robust to intensity inhomogeneity.Farhan AkramMiguel Angel GarciaDomenec PuigThis paper presents a region-based active contour method for the segmentation of intensity inhomogeneous images using an energy functional based on local and global fitted images. A square image fitted model is defined by using both local and global fitted differences. Moreover, local and global signed pressure force functions are introduced in the solution of the energy functional to stabilize the gradient descent flow. In the final gradient descent solution, the local fitted term helps extract regions with intensity inhomogeneity, whereas the global fitted term targets homogeneous regions. A Gaussian kernel is applied to regularize the contour at each step, which not only smoothes it but also avoids the computationally expensive re-initialization. Intensity inhomogeneous images contain undesired smooth intensity variations (bias field) that alter the results of intensity-based segmentation methods. The bias field is approximated with a Gaussian distribution and the bias of intensity inhomogeneous regions is corrected by dividing the original image by the approximated bias field. In this paper, a two-phase model is first derived and then extended to a four-phase model to segment brain magnetic resonance (MR) images into the desired regions of interest. Experimental results with both synthetic and real brain MR images are used for a quantitative and qualitative comparison with state-of-the-art active contour methods to show the advantages of the proposed segmentation technique in practical terms.http://europepmc.org/articles/PMC5380353?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Farhan Akram
Miguel Angel Garcia
Domenec Puig
spellingShingle Farhan Akram
Miguel Angel Garcia
Domenec Puig
Active contours driven by local and global fitted image models for image segmentation robust to intensity inhomogeneity.
PLoS ONE
author_facet Farhan Akram
Miguel Angel Garcia
Domenec Puig
author_sort Farhan Akram
title Active contours driven by local and global fitted image models for image segmentation robust to intensity inhomogeneity.
title_short Active contours driven by local and global fitted image models for image segmentation robust to intensity inhomogeneity.
title_full Active contours driven by local and global fitted image models for image segmentation robust to intensity inhomogeneity.
title_fullStr Active contours driven by local and global fitted image models for image segmentation robust to intensity inhomogeneity.
title_full_unstemmed Active contours driven by local and global fitted image models for image segmentation robust to intensity inhomogeneity.
title_sort active contours driven by local and global fitted image models for image segmentation robust to intensity inhomogeneity.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2017-01-01
description This paper presents a region-based active contour method for the segmentation of intensity inhomogeneous images using an energy functional based on local and global fitted images. A square image fitted model is defined by using both local and global fitted differences. Moreover, local and global signed pressure force functions are introduced in the solution of the energy functional to stabilize the gradient descent flow. In the final gradient descent solution, the local fitted term helps extract regions with intensity inhomogeneity, whereas the global fitted term targets homogeneous regions. A Gaussian kernel is applied to regularize the contour at each step, which not only smoothes it but also avoids the computationally expensive re-initialization. Intensity inhomogeneous images contain undesired smooth intensity variations (bias field) that alter the results of intensity-based segmentation methods. The bias field is approximated with a Gaussian distribution and the bias of intensity inhomogeneous regions is corrected by dividing the original image by the approximated bias field. In this paper, a two-phase model is first derived and then extended to a four-phase model to segment brain magnetic resonance (MR) images into the desired regions of interest. Experimental results with both synthetic and real brain MR images are used for a quantitative and qualitative comparison with state-of-the-art active contour methods to show the advantages of the proposed segmentation technique in practical terms.
url http://europepmc.org/articles/PMC5380353?pdf=render
work_keys_str_mv AT farhanakram activecontoursdrivenbylocalandglobalfittedimagemodelsforimagesegmentationrobusttointensityinhomogeneity
AT miguelangelgarcia activecontoursdrivenbylocalandglobalfittedimagemodelsforimagesegmentationrobusttointensityinhomogeneity
AT domenecpuig activecontoursdrivenbylocalandglobalfittedimagemodelsforimagesegmentationrobusttointensityinhomogeneity
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