2020
DOI: 10.1109/access.2019.2963435
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Active Contours Driven by Local and Global Region-Based Information for Image Segmentation

Abstract: Intensity inhomogeneity and noise are two major parts in image segmentation. Aiming at these problems, this work proposes a novel hybrid active contour method which combines local and global statistical information into an improved signed pressure force (SPF) function. First, by considering the global information extracted from a region of interest, a new global-based SPF function is created that effectively adjusts the signs of the pressure force inside and outside the evolving curve. Second, a new local-base… Show more

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Cited by 13 publications
(8 citation statements)
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“…An alternative method is implementing a semiautomated or fully automated segmentation system to minimize delays. However, this is not an easy task due to intensity inhomogeneity, noise, and obscured boundaries normally encountered during segmentation [58]. Table 3 summarizes works implementing segmentation techniques for breast thermograms.…”
Section: Work On Breastmentioning
confidence: 99%
“…An alternative method is implementing a semiautomated or fully automated segmentation system to minimize delays. However, this is not an easy task due to intensity inhomogeneity, noise, and obscured boundaries normally encountered during segmentation [58]. Table 3 summarizes works implementing segmentation techniques for breast thermograms.…”
Section: Work On Breastmentioning
confidence: 99%
“…However, µ is set according to the image intensity property. The segmentation results of the proposed model are compared with those of global fitting models ( CV [12] and SBGFRLS [13] ), local fitting models ( LBF [17] and LIF [19] ), and hybrid models ( GLSEPF [28], ALGR [29], FRAGL [30] and HLFRA [31] ). The parameters of the compared methods are set as the values described in the original papers.…”
Section: F Algorithm Implementationmentioning
confidence: 99%
“…Level set methods [14][15][16] are used intensively for segmenting medical images, where they can manage the cavities, concavities, splitting or merging. They depend on a speed function that is calculated from the image gradient.…”
Section: Step 2 Morphological Operations and Fcmmentioning
confidence: 99%