SKIN CANCER CLASSIFICATION

Authors

  • Shiva Shashank Dhavala R V College of Engineering Mysore Rd, RV Vidyaniketan Post, Bengaluru, Karnataka, 560059
  • Nagaraj Shrikrishna Hegde R V College of Engineering Mysore Rd, RV Vidyaniketan Post, Bengaluru, Karnataka, 560059
  • Srihari C R V College of Engineering Mysore Rd, RV Vidyaniketan Post, Bengaluru, Karnataka, 560059

Keywords:

Melanoma, Deep Learning, image segmentation

Abstract

 Skin cancer is considered as one of the most dangerous types of cancers and there is a drastic increase in the rate of deaths due to lack of knowledge on the symptoms and their prevention. Thus, early detection at a premature stage is necessary so that one can prevent the spreading of cancer. Skin cancer is further divided into various types out of which the most hazardous ones are Melanoma, Basal cell carcinoma and Squamous cell carcinoma.  The project is about detection and classification of various types of skin cancer using machine learning and image processing tools. In the pre-processing stage, dermoscopic images are considered as input. Dull razor method is used to remove all the unwanted hair particles on the skin lesion, then Gaussian filter is used for image smoothing. For noise filtering and to preserve the edges of the lesion, Median filter is used. Color is an important feature in analyzing the type of cancer, color-based k-means clustering is performed in segmentation phase. The statistical and texture feature extraction is implemented using Asymmetry, Border, Color, Diameter, (ABCD) and Gray Level Co- occurrence Matrix (GLCM).

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Published

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How to Cite

Shiva Shashank Dhavala, Nagaraj Shrikrishna Hegde, & Srihari C. (2022). SKIN CANCER CLASSIFICATION. EPRA International Journal of Multidisciplinary Research (IJMR), 8(8), 117–119. Retrieved from http://www.eprajournals.net/index.php/IJMR/article/view/780