Segmentation of Melanocytic Lesion Images Using Gamma Correction with Clustering of Keypoint Descriptors

The early detection of skin cancer, especially through the examination of lesions with malignant characteristics, has been reported to significantly decrease the potential fatalities. Segmentation of the regions that contain the actual lesions is one of the most widely used steps for achieving an au...

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Main Authors: Damilola Okuboyejo, Oludayo O. Olugbara
Format: Article
Language:English
Published: MDPI AG 2021-07-01
Series:Diagnostics
Subjects:
Online Access:https://www.mdpi.com/2075-4418/11/8/1366
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spelling doaj-e4bcb88bbc00457abdf5041d971d3c7a2021-08-26T13:40:04ZengMDPI AGDiagnostics2075-44182021-07-01111366136610.3390/diagnostics11081366Segmentation of Melanocytic Lesion Images Using Gamma Correction with Clustering of Keypoint DescriptorsDamilola Okuboyejo0Oludayo O. Olugbara1ICT and Society Research Group, South Africa Luban Workshop, Durban University of Technology, Durban 4000, South AfricaICT and Society Research Group, South Africa Luban Workshop, Durban University of Technology, Durban 4000, South AfricaThe early detection of skin cancer, especially through the examination of lesions with malignant characteristics, has been reported to significantly decrease the potential fatalities. Segmentation of the regions that contain the actual lesions is one of the most widely used steps for achieving an automated diagnostic process of skin lesions. However, accurate segmentation of skin lesions has proven to be a challenging task in medical imaging because of the intrinsic factors such as the existence of undesirable artifacts and the complexity surrounding the seamless acquisition of lesion images. In this paper, we have introduced a novel algorithm based on gamma correction with clustering of keypoint descriptors for accurate segmentation of lesion areas in dermoscopy images. The algorithm was tested on dermoscopy images acquired from the publicly available dataset of Pedro Hispano hospital to achieve compelling equidistant sensitivity, specificity, and accuracy scores of 87.29%, 99.54%, and 96.02%, respectively. Moreover, the validation of the algorithm on a subset of heavily noised skin lesion images collected from the public dataset of International Skin Imaging Collaboration has yielded the equidistant sensitivity, specificity, and accuracy scores of 80.59%, 100.00%, and 94.98%, respectively. The performance results are propitious when compared to those obtained with existing modern algorithms using the same standard benchmark datasets and performance evaluation indices.https://www.mdpi.com/2075-4418/11/8/1366data clusteringdermoscopy imagegamma correctionimage segmentationkeypoint descriptormelanocytic lesion
collection DOAJ
language English
format Article
sources DOAJ
author Damilola Okuboyejo
Oludayo O. Olugbara
spellingShingle Damilola Okuboyejo
Oludayo O. Olugbara
Segmentation of Melanocytic Lesion Images Using Gamma Correction with Clustering of Keypoint Descriptors
Diagnostics
data clustering
dermoscopy image
gamma correction
image segmentation
keypoint descriptor
melanocytic lesion
author_facet Damilola Okuboyejo
Oludayo O. Olugbara
author_sort Damilola Okuboyejo
title Segmentation of Melanocytic Lesion Images Using Gamma Correction with Clustering of Keypoint Descriptors
title_short Segmentation of Melanocytic Lesion Images Using Gamma Correction with Clustering of Keypoint Descriptors
title_full Segmentation of Melanocytic Lesion Images Using Gamma Correction with Clustering of Keypoint Descriptors
title_fullStr Segmentation of Melanocytic Lesion Images Using Gamma Correction with Clustering of Keypoint Descriptors
title_full_unstemmed Segmentation of Melanocytic Lesion Images Using Gamma Correction with Clustering of Keypoint Descriptors
title_sort segmentation of melanocytic lesion images using gamma correction with clustering of keypoint descriptors
publisher MDPI AG
series Diagnostics
issn 2075-4418
publishDate 2021-07-01
description The early detection of skin cancer, especially through the examination of lesions with malignant characteristics, has been reported to significantly decrease the potential fatalities. Segmentation of the regions that contain the actual lesions is one of the most widely used steps for achieving an automated diagnostic process of skin lesions. However, accurate segmentation of skin lesions has proven to be a challenging task in medical imaging because of the intrinsic factors such as the existence of undesirable artifacts and the complexity surrounding the seamless acquisition of lesion images. In this paper, we have introduced a novel algorithm based on gamma correction with clustering of keypoint descriptors for accurate segmentation of lesion areas in dermoscopy images. The algorithm was tested on dermoscopy images acquired from the publicly available dataset of Pedro Hispano hospital to achieve compelling equidistant sensitivity, specificity, and accuracy scores of 87.29%, 99.54%, and 96.02%, respectively. Moreover, the validation of the algorithm on a subset of heavily noised skin lesion images collected from the public dataset of International Skin Imaging Collaboration has yielded the equidistant sensitivity, specificity, and accuracy scores of 80.59%, 100.00%, and 94.98%, respectively. The performance results are propitious when compared to those obtained with existing modern algorithms using the same standard benchmark datasets and performance evaluation indices.
topic data clustering
dermoscopy image
gamma correction
image segmentation
keypoint descriptor
melanocytic lesion
url https://www.mdpi.com/2075-4418/11/8/1366
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