A COMPARATIVE ANALYSIS OF SINGLE AND COMBINATION FEATURE EXTRACTION TECHNIQUES FOR DETECTING CERVICAL CANCER LESIONS

Cervical cancer is the third most common form of cancer affecting women especially in third world countries. The predominant reason for such alarming rate of death is primarily due to lack of awareness and proper health care. As they say, prevention is better than cure, a better strategy has to be p...

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Main Authors: S. Pradeep Kumar Kenny, S.P. Victor
Format: Article
Language:English
Published: ICT Academy of Tamil Nadu 2016-02-01
Series:ICTACT Journal on Image and Video Processing
Subjects:
Online Access:http://ictactjournals.in/paper/IJIVP_V6_I3_pp_2_1167_1173.pdf
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spelling doaj-ac0f0c81339f414eba2c651c094914a32020-11-25T00:50:37ZengICT Academy of Tamil NaduICTACT Journal on Image and Video Processing0976-90990976-91022016-02-016311671173A COMPARATIVE ANALYSIS OF SINGLE AND COMBINATION FEATURE EXTRACTION TECHNIQUES FOR DETECTING CERVICAL CANCER LESIONSS. Pradeep Kumar Kenny0S.P. Victor1Manonmaniam Sundaranar University, IndiaSt. Xavier's College, IndiaCervical cancer is the third most common form of cancer affecting women especially in third world countries. The predominant reason for such alarming rate of death is primarily due to lack of awareness and proper health care. As they say, prevention is better than cure, a better strategy has to be put in place to screen a large number of women so that an early diagnosis can help in saving their lives. One such strategy is to implement an automated system. For an automated system to function properly a proper set of features have to be extracted so that the cancer cell can be detected efficiently. In this paper we compare the performances of detecting a cancer cell using a single feature versus a combination feature set technique to see which will suit the automated system in terms of higher detection rate. For this each cell is segmented using multiscale morphological watershed segmentation technique and a series of features are extracted. This process is performed on 967 images and the data extracted is subjected to data mining techniques to determine which feature is best for which stage of cancer. The results thus obtained clearly show a higher percentage of success for combination feature set with 100% accurate detection rate.http://ictactjournals.in/paper/IJIVP_V6_I3_pp_2_1167_1173.pdfCervical CancerFeature ExtractionTexture FeaturesContent Based Image Retrieval
collection DOAJ
language English
format Article
sources DOAJ
author S. Pradeep Kumar Kenny
S.P. Victor
spellingShingle S. Pradeep Kumar Kenny
S.P. Victor
A COMPARATIVE ANALYSIS OF SINGLE AND COMBINATION FEATURE EXTRACTION TECHNIQUES FOR DETECTING CERVICAL CANCER LESIONS
ICTACT Journal on Image and Video Processing
Cervical Cancer
Feature Extraction
Texture Features
Content Based Image Retrieval
author_facet S. Pradeep Kumar Kenny
S.P. Victor
author_sort S. Pradeep Kumar Kenny
title A COMPARATIVE ANALYSIS OF SINGLE AND COMBINATION FEATURE EXTRACTION TECHNIQUES FOR DETECTING CERVICAL CANCER LESIONS
title_short A COMPARATIVE ANALYSIS OF SINGLE AND COMBINATION FEATURE EXTRACTION TECHNIQUES FOR DETECTING CERVICAL CANCER LESIONS
title_full A COMPARATIVE ANALYSIS OF SINGLE AND COMBINATION FEATURE EXTRACTION TECHNIQUES FOR DETECTING CERVICAL CANCER LESIONS
title_fullStr A COMPARATIVE ANALYSIS OF SINGLE AND COMBINATION FEATURE EXTRACTION TECHNIQUES FOR DETECTING CERVICAL CANCER LESIONS
title_full_unstemmed A COMPARATIVE ANALYSIS OF SINGLE AND COMBINATION FEATURE EXTRACTION TECHNIQUES FOR DETECTING CERVICAL CANCER LESIONS
title_sort comparative analysis of single and combination feature extraction techniques for detecting cervical cancer lesions
publisher ICT Academy of Tamil Nadu
series ICTACT Journal on Image and Video Processing
issn 0976-9099
0976-9102
publishDate 2016-02-01
description Cervical cancer is the third most common form of cancer affecting women especially in third world countries. The predominant reason for such alarming rate of death is primarily due to lack of awareness and proper health care. As they say, prevention is better than cure, a better strategy has to be put in place to screen a large number of women so that an early diagnosis can help in saving their lives. One such strategy is to implement an automated system. For an automated system to function properly a proper set of features have to be extracted so that the cancer cell can be detected efficiently. In this paper we compare the performances of detecting a cancer cell using a single feature versus a combination feature set technique to see which will suit the automated system in terms of higher detection rate. For this each cell is segmented using multiscale morphological watershed segmentation technique and a series of features are extracted. This process is performed on 967 images and the data extracted is subjected to data mining techniques to determine which feature is best for which stage of cancer. The results thus obtained clearly show a higher percentage of success for combination feature set with 100% accurate detection rate.
topic Cervical Cancer
Feature Extraction
Texture Features
Content Based Image Retrieval
url http://ictactjournals.in/paper/IJIVP_V6_I3_pp_2_1167_1173.pdf
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