Publication: Melanoma Skin Cancer Detection Using Image Processing and Machine Learning Techniques
Type:
Article
Date
2020-12-10
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
2020 2nd International Conference on Advancements in Computing (ICAC), SLIIT
Abstract
In humans, skin cancer is the most common and severe
type of cancer. Melanoma is a deadly type of skin cancer. If it
identifies early stages, it can be easily cured. The formal method
for diagnosing melanoma detection is the biopsy method. This
method can be a very painful one and a time-consuming process.
This study gives a computer-aided detection system for the early
identification of melanoma. In this study, image processing
techniques and the Support vector machine (SVM) algorithms are
used to introduce an efficient diagnosing system. The affected skin
image is taken, and it sent under several pre-processing techniques
for getting the enhanced image and smoothed image. Then the
image is sent through the segmentation process using
morphological and thresholding methods. Some essential texture,
color and shape features of the skin images are extracted. Gray
Level Co-occurrence Matrix (GLCM) methodology is used for
extracting texture features. These extracted GLCM, color and
shape features are given as input to the SVM classifier. It classifies
the given image into malignant melanoma or benign melanoma.
High accuracy of 83% is achieved when we combine and apply the
shape, color and GLCM features to the classifier.
Description
Keywords
Melanoma, SVM, Segmentation, GLCM
