Logo image
EczemaNet: A Deep CNN-based Eczema Diseases Classification
Conference proceeding

EczemaNet: A Deep CNN-based Eczema Diseases Classification

Masum Shah Junayed, Abu Noman Md Sakib, Nipa Anjum, Md Baharul Islam and Afsana Ahsan Jeny
2020 IEEE 4th International Conference on Image Processing, Applications and Systems (IPAS), pp.174-179
2020 IEEE 4th International Conference on Image Processing, Applications and Systems (IPAS) (Genova, Italy, 12-09-2020–12-11-2020)
12-09-2020

Abstract

artificial intelligence classification CNN Conferences Dataset Diseases Eczema diseases Image segmentation Machine learning algorithms Medical services Skin Transforms Computer Vision
Eczema is the most common among all types of skin diseases. A solution for this disease is very crucial for patients to have better treatment. Eczema is usually detected manually by doctors or dermatologists. It is tough to distinguish between different types of Eczema because of the similarities in symptoms. In recent years, several attempts have been taken to automate the detection of skin diseases with much accuracy. Many methods such as Image Processing Techniques, Machine Learning algorithms are getting used to execute segmentation and classification of skin diseases. It is found that among all those skin disease detection systems, particularly detection work on eczema disease is rare. There is also insufficiency in eczema disease dataset. In this paper, we propose a novel deep CNN-based approach for classifying five different classes of Eczema with our collected dataset. Data augmentation is used to transform images for better performance. Regularization techniques such as batch normalization and dropout helped to reduce overfitting. Our proposed model achieved an accuracy of 96.2%, which exceeded the performance of the state of the arts.
url
Link to published article.View

Related links

Metrics

32 Record Views

Details

UN Sustainable Development Goals (SDGs)

This output has contributed to the advancement of the following goals:

#3 Good Health and Well-Being

Source: SDGs in the Output

Logo image