DenseNet based skin lesion classification and melanoma detection
Abstract
In the language of medical science, the most harmful variant of skin cancer that
may develop in human cells is distinguished as melanoma. The principal reasons
behind developing melanoma in human skin are still unknown. However, scientists
assume that the risk of developing melanoma increases due to exposure to ultraviolet
radiation emitting from the sun. The increased rate of melanoma cancer is now a
threat to the medical sector to cope with the increasing number of patients. Many
scientists have already researched and tried to develop different projects to identify
melanoma efficiently. Skin lesions are the best approach to find the symptoms of
melanoma and predict the possibility of cancer growing in the skin. In this research
paper, the main objective is to classify different types of lesions and find melanoma
from skin lesion images using DenseNet-121 which is a densely connected CNN-based
algorithm. We evaluated on 5066 imbalanced test images from ISIC 2019 Challenge
dataset for initial classification of lesion images. We also organized the dataset into
a balanced dataset by over sampling and downsampling where 600 test images were
used for validation. The evaluation of imbalanced and balanced datasets results
in respectively 80% and 84% accuracy for lesion images classification. Moreover,
we normalized the dataset into two different classes which consists of melanoma
and non-melanoma lesion images to perform binary classification. In this stage, we
executed our model on 2000 test images and got an accuracy of 89% for classifying
melanoma accurately.