A primary morphological classifier for skin lesion images
College
College of Computer Studies
Department/Unit
Software Technology
Document Type
Conference Proceeding
Source Title
Computer Science Research Notes
Volume
2701
Issue
May
First Page
55
Last Page
64
Publication Date
1-1-2017
Abstract
Classifying skin lesions, abnormal changes in skin, into their morphologies is the first step in diagnosing skin diseases. In dermatology, morphology is a categorization of a skin lesion's structure and appearance. Rather than directly classifying skin diseases, this research aims to explore classifying skin lesion images into primary morphologies. For preprocessing, k-means clustering for image segmentation and illumination equalization were applied. Additionally, features utilized considered color, texture, and shape. For classification, k-Nearest Neighbors, Decision Trees, Multilayer Perceptron, and Support Vector Machines were used. To evaluate the prototype, 10-fold cross validation was applied over a dataset assembled from online resources. In experimentation, the morphologies considered were macule, nodule, papule, and plaque. Moreover, different feature subsets were tested through feature selection experiments. Experimental results on the 4-class and 3-class tests show that of the classifiers selected, Decision Trees were best, having a Cohen's kappa of 0.503 and 0.558 respectively. © 2017 Computer Science Research Notes.
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Recommended Citation
Macatangay, J. A., Ruiz, C. R., & Usatine, R. P. (2017). A primary morphological classifier for skin lesion images. Computer Science Research Notes, 2701 (May), 55-64. Retrieved from https://animorepository.dlsu.edu.ph/faculty_research/2695
Disciplines
Computer Sciences
Keywords
Skin—Diseases; Computer vision; Machine learning; Image segmentation; Nearest neighbor analysis (Statistics)
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