Journal of Information System and Application Development
Vol. 2 No. 2 (2024): September 2024

Image classification of leaf disease in corn plants (Zea Mays L.) using the MobileNetV2 method

Achmad, Dellyan (Unknown)
Putra, Oddy Virgantara (Unknown)
Muriyatmoko, Dihin (Unknown)



Article Info

Publish Date
02 Sep 2024

Abstract

One of the main problems leading to low yields and possible crop failure in maize, a crop of great importance to human civilization, is that plant diseases are discovered and treated too late, leading to more severe diseases and even crop failure. Using photos taken from the Kaggle platform and some field shots, this research seeks to develop a classification system that can identify different types of diseases present on maize leaves. The disease types identified include Common Rust, Gray Leaf Spot, and Bacterial Leaf Blight. MobileNetV2 uses a Convolutional Neural Network (CNN) design to handle resource-intensive processes. To produce a lightweight model, this CNN uses separate corner shifts. The dataset for this study was taken from field shooting and the Kaggle platform. The study found that the MobileNetV2 model clarified objects very well with 93.01% accuracy. This discovery will help farmers find diseases on corn leaves (Zea Mays L.).

Copyrights © 2024






Journal Info

Abbrev

jisad

Publisher

Subject

Computer Science & IT

Description

The Journal of Information System and Application Development (JISAD) is an open-access journal published by the Department of Information System, Faculty of Information Technology, University of Merdeka Malang, Indonesia. JISAD prioritizes the quality of the journal, methodology, and tools and ...