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Skin Lesion Segmentation and Classification Using Conventional and Deep Learning Based Framework

Authors
Bibi, AminaKhan, Muhamamd AttiqueJaved, Muhammad YounusTariq, UsmanKang, Byeong-GwonNam, YunyoungMostafa, Reham R.Sakr, Rasha H.
Issue Date
Jan-2022
Publisher
Tech Science Press
Keywords
Skin cancer; lesion segmentation; deep learning; features fusion; classification
Citation
Computers, Materials and Continua, v.71, no.2, pp 2477 - 2495
Pages
19
Journal Title
Computers, Materials and Continua
Volume
71
Number
2
Start Page
2477
End Page
2495
URI
https://scholarworks.bwise.kr/sch/handle/2021.sw.sch/20185
DOI
10.32604/cmc.2022.018917
ISSN
1546-2218
1546-2226
Abstract
Background: In medical image analysis, the diagnosis of skin lesions remains a challenging task. Skin lesion is a common type of skin cancer that exists worldwide. Dermoscopy is one of the latest technologies used for the diagnosis of skin cancer. Challenges: Many computerized methods have been introduced in the literature to classify skin cancers. However, challenges remain such as imbalanced datasets, low contrast lesions, and the extraction of irrelevant or redundant features. Proposed Work: In this study, a new technique is proposed based on the conventional and deep learning framework. The proposed framework consists of two major tasks: lesion segmentation and classification. In the lesion segmentation task, contrast is initially improved by the fusion of two filtering techniques and then performed a color transformation to color lesion area color discrimination. Subsequently, the best channel is selected and the lesion map is computed, which is further converted into a binary form using a thresholding function. In the lesion classification task, two pre-trained CNN models were modified and trained using transfer learning. Deep features were extracted from both models and fused using canonical correlation analysis. During the fusion process, a few redundant features were also added, lowering classification accuracy. A new technique called maximum entropy score-based selection (MESbS) is proposed as a solution to this issue. The features selected through this approach are fed into a cubic support vector machine (C-SVM) for the final classification. Results: The experimental process was conducted on two datasets: ISIC 2017 and HAM10000. The ISIC 2017 dataset was used for the lesion segmentation task, whereas the HAM10000 dataset was used for the classification task. The achieved accuracy for both datasets was 95.6% and 96.7%, respectively, which was higher than the existing techniques.
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