Multi-Output Vs Single-Output Deep Learning for Plant Disease Detection
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Date
2025
Journal Title
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Volume Title
Publisher
Institute of Electrical and Electronics Engineers Inc.
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Abstract
AI-based image processing plays a crucial role in agriculture by enabling early detection of plant diseases, thereby increasing crop productivity and minimizing economic losses. In this study, we present a comparative analysis between a multi-output deep learning model, which simultaneously classifies plant species and assesses their health status, and two separate single-output models trained for each task individually. The publicly available PlantVillage dataset was used for training and evaluation. Performance metrics such as classification accuracy, F1 score, training time, and confusion matrices were used to assess each model. Our results indicate that the multi-output architecture achieves remarkably high classification performance (Plant: 99.98%, Health: 99.78%) while significantly reducing training time by nearly 50% compared to the combined cost of training two individual models. This demonstrates that a unified model not only provides computational efficiency but also maintains predictive strength, making it a practical alternative for real-time agricultural decision support systems. The findings suggest that integrated modeling can contribute to the development of scalable, resource-efficient solutions in precision agriculture. © 2025 IEEE.
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Keywords
Artificial Intelligence, Deep Learning, Image Processing, Multi-Output Model, Plant Diseases, Transfer Learning
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OpenCitations Citation Count
N/A
Source
International Conference on Computer Science and Engineering, UBMK
Volume
Issue
2025
Start Page
190
End Page
195
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