Skin disease detection and classification using deep learning
Date
2022-01Publisher
Brac UniversityAuthor
Shuvon, Mehedi HasanSadia, Rowshanara
Shormi, Shanjida Habib
Arafin, Umma Tania
Chowdhury, Md. Rawha Mikdad
Metadata
Show full item recordAbstract
Skin Diseases have been the primary focus of this study, as they are one of the
most lethal diseases if not diagnosed and treated early. The research will enable
the fields of Medical Science and Computer Science to collaborate in order to save
lives. Although Machine Learning, Deep Learning, and Image Processing have been
utilized previously to treat skin diseases, we are attempting to improve the accuracy
of this work by implementing new models of Image Processing and Deep Learning.
The purpose of this research is to demonstrate how to accurately diagnose Skin
diseases at an early stage using the optimum model. Here we have used three distinct
neural models to classify a custom dataset. We further analyzed the accuracy of
the MobileNetV2, InceptionV3, and ResNetV2 to come up with an optimized model
that can be configured further to a mobile application for vast use. We built the
architecture on more than 1450 images representing nine distinct skin disorders in
comparison with fresh skin. We carefully compared our data and classified it based
on the images of our customized dataset. Finally, we determined the nine diseases
with a 96.77% accuracy with the help of MobileNetV2 which is our ideal model for
the goal we want to achieve.