Assessment of Segmentation techniques for skin cancer detection
Author(s) -
Srividya T.D.,
V. Arulmozhi
Publication year - 2020
Publication title -
international research journal on advanced science hub
Language(s) - English
Resource type - Journals
ISSN - 2582-4376
DOI - 10.47392/irjash.2020.151
Subject(s) - skin cancer , segmentation , cancer detection , artificial intelligence , lesion , skin lesion , cancer , human skin , skin biopsy , medicine , dermatology , biopsy , computer science , pattern recognition (psychology) , pathology , biology , genetics
Skin cancer appears to be the most common among all tumors throughout the globe. The initial finding of skin cancer can be alleviated. Late detection leads to fatal. A human inquiry is thought-provoking. The biopsy procedure is agonizing, so computerized examination of skin cancer turns out to be noteworthy. A prevalent literature survey is carried out to study the State-of-art procedures for skin cancer diagnosis. Segmentation of skin lesion is a crucial task due to several features like the existence of hair, illumination difference, irregular skin color, and multiple unnatural skin regions. This paper recommends a comparison of various segmentation techniques and k-means clustering algorithms to segment the lesion. Several methodologies have been anticipated to determine skin cancer. The features can be resolved by familiarizing an advanced method for segmenting the skin lesion from macroscopic images based on the discrete wavelet transformation.
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