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Computer-aided diagnosis of skin cancers using dermatology images

Authors :
Gilani, Syed Qasim (author)
Marques, Oge (Thesis advisor)
Florida Atlantic University (Degree grantor)
Department of Computer and Electrical Engineering and Computer Science
College of Engineering and Computer Science
Gilani, Syed Qasim (author)
Marques, Oge (Thesis advisor)
Florida Atlantic University (Degree grantor)
Department of Computer and Electrical Engineering and Computer Science
College of Engineering and Computer Science
Publication Year :
2023

Abstract

Skin cancer is a prevalent cancer that significantly contributes to global mortality rates. Early detection is crucial for a high survival rate. Dermatologists primarily rely on visual inspection to diagnose skin cancers, but this method is inaccurate. Deep learning algorithms can enhance the diagnostic accuracy of skin cancers. However, these algorithms require substantial labeled data for effective training. Acquiring annotated data for skin cancer classification is time-consuming, expensive, and necessitates expert annotation. Moreover, skin cancer datasets often suffer from imbalanced data distribution. Generative Adversarial Networks (GANs) can be used to overcome the challenges of data scarcity and lack of labels by automatically generating skin cancer images. However, training and testing data from different distributions can introduce domain shift and bias, impacting the model’s performance. This dissertation addresses this issue by developing deep learning-based domain adaptation models. Additionally, this research emphasizes deploying deep learning models on hardware to enable real-time skin cancer detection, facilitating accurate diagnoses by dermatologists. Deploying conventional deep learning algorithms on hardware is not preferred due to the problem of high resource consumption. Therefore, this dissertation presents spiking neural network-based (SNN) models designed specifically for hardware implementation. SNNs are preferred for their power-efficient behavior and suitability for hardware deployment.<br />2023<br />Includes bibliography.<br />Degree granted: Dissertation (PhD)--Florida Atlantic University, 2023.<br />Collection: FAU Electronic Theses and Dissertations Collection

Details

Database :
OAIster
Notes :
140 p., application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1417949453
Document Type :
Electronic Resource