Ringworm Detection and Diagnosis System.

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Date

2024

Journal Title

Journal ISSN

Volume Title

Publisher

Kabale University

Abstract

Ringworm, a common fungal infection, affects millions worldwide. Early detection is crucial for effective treatment and prevention of transmission. This report presents a novel ringworm detection system utilizing deep learning and image processing. We carried out our research within a period of seven months and our system performed the desired work. We developed a ringworm detection and diagnosis system that offers rapid and accurate results for early intervention and treatment. Hardware and software. The system employs picture imaging using processor Intel i5, 8GB RAM, and the operating system Windows 10 Pro. The proposed system achieves an accurate detection rate of ringworm. Sampling method was used like Interviewing and Observation.

Description

Keywords

Ringworm Detection, Diagnosis System

Citation

Asiimwe, J., & Barigye, D. D. (2024). Ringworm Detection and Diagnosis System. Kabale: Kabale University.