Combination of Color and Focus Segmentation for Medical Images with Low Depth-of-Field

Image segmentation plays an increasingly important role in image processing. It allows for various applications including the analysis of an image for automatic image understanding and the integration of complementary data. During vascular surgeries, the blood flow in the vessels has to be checked c...

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Main Authors: Wirth Tamara, Naber Ady, Nahm Werner
Format: Article
Language:English
Published: De Gruyter 2018-09-01
Series:Current Directions in Biomedical Engineering
Subjects:
Online Access:https://doi.org/10.1515/cdbme-2018-0083
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spelling doaj-880ef35a33da45d19fe91e6e819a94762021-09-06T19:19:26ZengDe GruyterCurrent Directions in Biomedical Engineering2364-55042018-09-014134534910.1515/cdbme-2018-0083cdbme-2018-0083Combination of Color and Focus Segmentation for Medical Images with Low Depth-of-FieldWirth Tamara0Naber Ady1Nahm Werner2Karlsruhe Institute of Technology (KIT), Institute of Biomedical Engineering (IBT), Kaiserstrasse 12 in 76135Karlsruhe, GermanyKarlsruhe Institute of Technology (KIT), Institute of Biomedical Engineering (IBT),Karlsruhe, GermanyKarlsruhe Institute of Technology (KIT), Institute of Biomedical Engineering (IBT),Karlsruhe, GermanyImage segmentation plays an increasingly important role in image processing. It allows for various applications including the analysis of an image for automatic image understanding and the integration of complementary data. During vascular surgeries, the blood flow in the vessels has to be checked constantly, which could be facilitated by a segmentation of the affected vessels. The segmentation of medical images is still done manually, which depends on the surgeon’s experience and is time-consuming. As a result, there is a growing need for automatic image segmentation methods. We propose an unsupervised method to detect the regions of no interest (RONI) in intraoperative images with low depth-of-field (DOF). The proposed method is divided into three steps. First, a color segmentation using a clustering algorithm is performed. In a second step, we assume that the regions of interest (ROI) are in focus whereas the RONI are unfocused. This allows us to segment the image using an edge-based focus measure. Finally, we combine the focused edges with the color RONI to determine the final segmentation result. When tested on different intraoperative images of aneurysm clipping surgeries, the algorithm is able to segment most of the RONI not belonging to the pulsating vessel of interest. Surgical instruments like the metallic clips can also be excluded. Although the image data for the validation of the proposed method is limited to one intraoperative video, a proof of concept is demonstrated.https://doi.org/10.1515/cdbme-2018-0083image segmentationregions of no interestlow depth-of-field (dof)edge linking
collection DOAJ
language English
format Article
sources DOAJ
author Wirth Tamara
Naber Ady
Nahm Werner
spellingShingle Wirth Tamara
Naber Ady
Nahm Werner
Combination of Color and Focus Segmentation for Medical Images with Low Depth-of-Field
Current Directions in Biomedical Engineering
image segmentation
regions of no interest
low depth-of-field (dof)
edge linking
author_facet Wirth Tamara
Naber Ady
Nahm Werner
author_sort Wirth Tamara
title Combination of Color and Focus Segmentation for Medical Images with Low Depth-of-Field
title_short Combination of Color and Focus Segmentation for Medical Images with Low Depth-of-Field
title_full Combination of Color and Focus Segmentation for Medical Images with Low Depth-of-Field
title_fullStr Combination of Color and Focus Segmentation for Medical Images with Low Depth-of-Field
title_full_unstemmed Combination of Color and Focus Segmentation for Medical Images with Low Depth-of-Field
title_sort combination of color and focus segmentation for medical images with low depth-of-field
publisher De Gruyter
series Current Directions in Biomedical Engineering
issn 2364-5504
publishDate 2018-09-01
description Image segmentation plays an increasingly important role in image processing. It allows for various applications including the analysis of an image for automatic image understanding and the integration of complementary data. During vascular surgeries, the blood flow in the vessels has to be checked constantly, which could be facilitated by a segmentation of the affected vessels. The segmentation of medical images is still done manually, which depends on the surgeon’s experience and is time-consuming. As a result, there is a growing need for automatic image segmentation methods. We propose an unsupervised method to detect the regions of no interest (RONI) in intraoperative images with low depth-of-field (DOF). The proposed method is divided into three steps. First, a color segmentation using a clustering algorithm is performed. In a second step, we assume that the regions of interest (ROI) are in focus whereas the RONI are unfocused. This allows us to segment the image using an edge-based focus measure. Finally, we combine the focused edges with the color RONI to determine the final segmentation result. When tested on different intraoperative images of aneurysm clipping surgeries, the algorithm is able to segment most of the RONI not belonging to the pulsating vessel of interest. Surgical instruments like the metallic clips can also be excluded. Although the image data for the validation of the proposed method is limited to one intraoperative video, a proof of concept is demonstrated.
topic image segmentation
regions of no interest
low depth-of-field (dof)
edge linking
url https://doi.org/10.1515/cdbme-2018-0083
work_keys_str_mv AT wirthtamara combinationofcolorandfocussegmentationformedicalimageswithlowdepthoffield
AT naberady combinationofcolorandfocussegmentationformedicalimageswithlowdepthoffield
AT nahmwerner combinationofcolorandfocussegmentationformedicalimageswithlowdepthoffield
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