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CNN segmentation of skin melanoma in pre-processed dermoscopy images

Seifedine Kadry, Elena Verdú, Robertas Damaševičius, Laith Abualigah, Vijendra Singh, V. Rajinikanth

2024Procedia Computer Science28 citationsDOIOpen Access PDF

Abstract

Using medical data to improve diagnosis accuracy has recently become common practice in hospitals. A modern computing environment has enabled real-time diagnosis of medical data using Convolutional Neural Networks (CNNs). To extract and evaluate skin melanoma recorded with digital dermatoscopy images (DDI), we developed a CNN segmentation framework. In this proposal, four phases are proposed: (i) DDI collection and resizing, (ii) DDI enhancement using pre-processing techniques, (iii) CNN segmentation for lesion extraction, (v) Comparing the extracted sections to the ground truth images, and (v) Verifying whether the framework is valid. Using DDI pre-processed with (i) Traditional procedures, (ii) Otsu’s thresholding, (iii) Kapur’s thresholding, and (iv) Fuzzy-Tsallis thresholding, this proposal examines the different CNN segmentation schemes presented in the literature. For mining skin lesions, the Moth-Flame Algorithm (MFA) combined with tri-level thresholding achieves an optimal threshold for the DDI. With Fuzzy-Tsallis thresholding images, the VGG-UNet performs better than the alternatives. This framework helps to achieve better values of Jaccard (88.47±2.13%), Dice (93.08±1.17%), and Accuracy (98.64±0.71%) on the chosen DDI database.

Topics & Concepts

Computer scienceSegmentationArtificial intelligenceComputer visionMelanoma diagnosisMelanomaPattern recognition (psychology)MedicineCancer researchCutaneous Melanoma Detection and ManagementAI in cancer detectionInfrared Thermography in Medicine
CNN segmentation of skin melanoma in pre-processed dermoscopy images | Litcius