2022
DOI: 10.54365/adyumbd.1112260
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Skin Lesion Segmentation Using K-means Clustering with Removal Unwanted Regions

Abstract: The segmentation of skin lesions is crucial to the early and accurate identification of skin cancer by computerized systems. It is difficult to automatically divide skin lesions in dermoscopic images because of challenges such as hairs, gel bubbles, ruler marks, fuzzy boundaries, and low contrast. We proposed an effective method based on K-means and a trainable machine learning system to segment regions of interest (ROI) in skin cancer images. The proposed method was implemented in several stages, including gr… Show more

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“…Belirli koşullar altında gürültüyü ortadan kaldırırken kenarları korur. Filtrenin sinyal işleme uygulamaları da mevcuttur [12,24]. Şekil 6'da tuz-biber gürültüsünü gidermek amacıyla uygulanmış medyan filtresinin etkisi sunulmuştur.…”
Section: Filtrelemeunclassified
“…Belirli koşullar altında gürültüyü ortadan kaldırırken kenarları korur. Filtrenin sinyal işleme uygulamaları da mevcuttur [12,24]. Şekil 6'da tuz-biber gürültüsünü gidermek amacıyla uygulanmış medyan filtresinin etkisi sunulmuştur.…”
Section: Filtrelemeunclassified