UNSUPERVISED WOUND IMAGE SEGMENTATION

The purpose of our research is to introduce two unique approaches for the unsupervised segmentation of wound images. The first method of segmentation is by using the texture of the image and is performed using the multi-channel filtering hypothesis for the processing of visual or optical data during...

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Main Authors: K. Sundeep Kumar, C. F. Jacob, B. Eswara Reddy
Format: Article
Language:English
Published: ICT Academy of Tamil Nadu 2014-02-01
Series:ICTACT Journal on Image and Video Processing
Subjects:
Online Access:http://ictactjournals.in/paper/IJIVP_Paper_3_737_747.pdf
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spelling doaj-e2b7d4fb3bd14eaeaa638501cb83f9a52020-11-25T02:40:29ZengICT Academy of Tamil NaduICTACT Journal on Image and Video Processing0976-90990976-91022014-02-0143737747UNSUPERVISED WOUND IMAGE SEGMENTATIONK. Sundeep Kumar0C. F. Jacob1B. Eswara Reddy2Department of Information Science and Engineering, SEA College of Engineering & Technology, IndiaDepartment of Computer Science and Engineering, CMR Institute of Technology, IndiaDepartment of Computer Science and Engineering, JNTU College of Engineering, IndiaThe purpose of our research is to introduce two unique approaches for the unsupervised segmentation of wound images. The first method of segmentation is by using the texture of the image and is performed using the multi-channel filtering hypothesis for the processing of visual or optical data during the preliminary stages of the Human Visual System. We obtain the different channels from an image by filtering the image using a Gabor Filter Bank. The textural features are obtained from each filtered image and the final segmented image is acquired by reconstructing the original input image from these filtered images. The second method of segmentation was performed using parametric kernel graph cuts. Using a kernel function we transform the image data implicitly such that a piecewise constant model of the graph cut interpretation is now applicable. The objective function comprises of an original data term in order to assess the deviance of the transformed data from the initial input data within each partition. This method avoids sophisticated modelling of the input image data while availing of the computational advantages of graph cuts. By using a conventional kernel function, the energy minimization boils down to image partitioning via graph cut iterations and assessments of region parameters by means of fixed point calculations. The efficacy and flexibility of both the methods are established by carrying out investigations on real wound images.http://ictactjournals.in/paper/IJIVP_Paper_3_737_747.pdfGabor Filter BanksGraph CutsRadial Basis Function (RBF)Wound HealingHuman Visual System (HVS)
collection DOAJ
language English
format Article
sources DOAJ
author K. Sundeep Kumar
C. F. Jacob
B. Eswara Reddy
spellingShingle K. Sundeep Kumar
C. F. Jacob
B. Eswara Reddy
UNSUPERVISED WOUND IMAGE SEGMENTATION
ICTACT Journal on Image and Video Processing
Gabor Filter Banks
Graph Cuts
Radial Basis Function (RBF)
Wound Healing
Human Visual System (HVS)
author_facet K. Sundeep Kumar
C. F. Jacob
B. Eswara Reddy
author_sort K. Sundeep Kumar
title UNSUPERVISED WOUND IMAGE SEGMENTATION
title_short UNSUPERVISED WOUND IMAGE SEGMENTATION
title_full UNSUPERVISED WOUND IMAGE SEGMENTATION
title_fullStr UNSUPERVISED WOUND IMAGE SEGMENTATION
title_full_unstemmed UNSUPERVISED WOUND IMAGE SEGMENTATION
title_sort unsupervised wound image segmentation
publisher ICT Academy of Tamil Nadu
series ICTACT Journal on Image and Video Processing
issn 0976-9099
0976-9102
publishDate 2014-02-01
description The purpose of our research is to introduce two unique approaches for the unsupervised segmentation of wound images. The first method of segmentation is by using the texture of the image and is performed using the multi-channel filtering hypothesis for the processing of visual or optical data during the preliminary stages of the Human Visual System. We obtain the different channels from an image by filtering the image using a Gabor Filter Bank. The textural features are obtained from each filtered image and the final segmented image is acquired by reconstructing the original input image from these filtered images. The second method of segmentation was performed using parametric kernel graph cuts. Using a kernel function we transform the image data implicitly such that a piecewise constant model of the graph cut interpretation is now applicable. The objective function comprises of an original data term in order to assess the deviance of the transformed data from the initial input data within each partition. This method avoids sophisticated modelling of the input image data while availing of the computational advantages of graph cuts. By using a conventional kernel function, the energy minimization boils down to image partitioning via graph cut iterations and assessments of region parameters by means of fixed point calculations. The efficacy and flexibility of both the methods are established by carrying out investigations on real wound images.
topic Gabor Filter Banks
Graph Cuts
Radial Basis Function (RBF)
Wound Healing
Human Visual System (HVS)
url http://ictactjournals.in/paper/IJIVP_Paper_3_737_747.pdf
work_keys_str_mv AT ksundeepkumar unsupervisedwoundimagesegmentation
AT cfjacob unsupervisedwoundimagesegmentation
AT beswarareddy unsupervisedwoundimagesegmentation
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