A Lightweight Mobile Deep Learning Framework for Real-Time Plant Disease Detection in Smart Agriculture
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Date
2025
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Institute of Electrical and Electronics Engineers Inc.
Abstract
It is imperative to detect plant diseases early to enhance agricultural productivity and ensure food security. Conventional diagnostic techniques, which rely on the analysis of experts, are often laborious, expensive and less accessible, particularly in isolated regions. The present study proposes an automated plant disease detection system optimized using deep learning. The system utilizes Convolutional Neural Networks (CNNs). The proposed approach integrates advanced preprocessing techniques, including data augmentation, resizing, and normalization, to enhance model robustness and generalization. To facilitate deployment on mobile devices with limited resources, the MobileNetV2 architecture was optimized through quantization and conversion to TensorFlow Lite (TFLite). This approach resulted in a substantial reduction in computational complexity while maintaining an elevated level of classification accuracy. The mobile application, developed using Kotlin, facilitates the capture or upload of plant images and the execution of real-time disease detection directly on the device, thus obviating server communication. The experimental results demonstrate that the MobileNetV2 (Optimized) model achieved an accuracy of 99.48%, an F 1-score of 99%, and an AUC of 1.00, thus confirming its effectiveness for real-world agricultural applications. This study demonstrates the considerable potential of lightweight and efficient AI-driven solutions to transform the realm of plant disease detection, thereby rendering precision agriculture more accessible, particularly in resourceconstrained environments. © 2025 Elsevier B.V., All rights reserved.
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Keywords
CNN, Deep Learning, Mobile Application, Plant Disease Detection, Convolutional Neural Networks, Diagnosis, Mobile Applications, Mobile Computing, Plant Diseases, Precision Agriculture, Smart Agriculture, Agricultural Productivity, Convolutional Neural Network, Deep Learning, Disease Detection, Learning Frameworks, Plant Disease, Plant Disease Detection, Real-Time, Smart Agriculture
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-- 9th International Symposium on Innovative Approaches in Smart Technologies, ISAS 2025 -- Gaziantep -- 211342