A Comparative Study on the Diagnosis of Skin Cancer using different Models in Deep Learning
Journal: International Journal of Science and Research (IJSR) (Vol.9, No. 6)Publication Date: 2020-06-05
Authors : Surya S Kumar; Dhanesh M S;
Page : 750-753
Keywords : Deep Learning models; CNN; ResNet18; AlexNet; ResNet50; Transfer Learning; Cancer; Skin Cancer; Deep Learning;
Abstract
Skin cancer is a common form of cancer, and early detection increases survival rates. This paper presents a comparison of the different types of deep learning models used to detect skin cancer. Based on Convolutional Neural Networks (CNN), the skin cancer detection is done. The different networks in CNN are used, namely ResNet18, AlexNet and ResNet50. Transfer learning is a neural network model, which is also used in skin cancer diagonosis. HAM10000 is the skin cancer dataset used and the accuracy obtained in using different models is then compared.
Other Latest Articles
- A Study on Smart Parking Assistance
- Isolation of Common Nosocomialpathogens from Gate Pass Used in Aminu Kano Teaching Hospital and Bayero University Kano, Nigeria
- Perception of Speaking for Academic Purposes among Novice Scholars at University of Khartoum
- IMS Configuration Reading Performance Enhancement Using Delta Configuration Approach
- Significance of Microfinance in Emerging Economies
Last modified: 2021-06-28 17:08:00