Mobile-based potato leaf disease identifier using ensemble modeling

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Research Paper 08/04/2026
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Mobile-based potato leaf disease identifier using ensemble modeling

Karen W. Cantilang*, Laarni M. Ladiao
J. Biodiv. & Environ. Sci. 28(4), 58-64, April 2026.
Copyright Statement: Copyright 2026; The Author(s).
License: CC BY-NC 4.0

Abstract

Potato leaf diseases pose a significant threat to crop productivity, necessitating accurate, accessible, and real-time diagnostic solutions. This study proposes a mobile-based potato leaf disease identification system using ensemble modeling to improve classification accuracy and support early disease detection in agricultural environments. The system classifies seven categories, including six disease types—bacteria, fungi, nematode, pest, Phytophthora, and virus—and one healthy (normal) class. A dataset of 3,000 potato leaf images was utilized following the Knowledge Discovery in Databases (KDD) framework, including data selection, preprocessing, transformation, data mining, and evaluation. Deep feature extraction was performed using the Inception v3 convolutional neural network to generate high-dimensional image embeddings. These features were classified using Support Vector Machines (SVM) and further enhanced through a stacking-based ensemble approach to improve predictive performance. Experimental results show that the proposed model achieved an overall classification accuracy of 88% and a macro-averaged Area Under the Curve (AUC) of 0.92, demonstrating strong discriminative capability across all classes. The ensemble model outperformed individual classifiers, particularly in distinguishing visually similar disease categories. The system is designed for mobile deployment with both online and offline functionality, making it suitable for real-world agricultural applications, especially in resource-limited settings. This study highlights the effectiveness of integrating deep learning-based feature extraction with ensemble learning techniques for robust plant disease detection and scalable precision agriculture solutions.

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