Potato Plant Leaf Disease Diagnosis System
Student: Ezra Andrew (Project, 2025)
Department of Computer Science and Informatics
Kaduna State University, Kaduna, Kaduna State
Abstract
Potatoes are one of the world’s most important food crops, but they are vulnerable to various diseases that can reduce yield and quality. Many farmers in Nigeria still rely on manual inspection and random chemical application, which are often ineffective. This study introduces a Potato Plant Leaf Disease Diagnosis System that uses deep learning to improve disease detection. The system is powered by the EfficientNetB7 Convolutional Neural Network (CNN), a highly accurate model for image classification. The model was trained on a dataset of potato leaf images and achieved 98% accuracy on the test set and 97.5% validation accuracy, proving its reliability. The system is available as a web application, allowing farmers to upload or capture leaf images, get a diagnosis, and receive treatment advice. By providing a fast and accurate diagnosis, the system helps farmers make better decisions, improve crop health, and reduce losses.
Keywords
For the full publication, please contact the author directly at: ezraandrew@gmail.com
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Institutions
- Federal Polytechnic, Mubi, Adamawa State 20
- Federal Polytechnic, Nasarawa, Nasarawa State 59
- Federal Polytechnic, Nekede, Imo State 53
- Federal Polytechnic, offa, Kwara State 18
- Federal Polytechnic, Oko, Anambra State 8
- Federal School of Biomedical Engineering, (LUTH), Idi-Araba, Lagos State 1
- Federal School of Surveying, Oyo, Oyo State 7
- Federal University of Agriculture, Abeokuta, Ogun State 19
- Federal University of Petroleum Resources, Effurun, Delta State 77
- Federal University of Technology Akure, Ondo State 23