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An Efficient Hybrid CNN Classification Model for Tomato Crop Disease

Maria Vasiliki Sanida, Theodora Sanida, Argyrios Sideris, Minas Dasygenis

2023Technologies52 citationsDOIOpen Access PDF

Abstract

Tomato plants are vulnerable to a broad number of diseases, each of which has the potential to cause significant damage. Diseases that affect crops substantially negatively impact the quantity and quality of agricultural products. Regarding quality crop maintenance, the importance of a timely and accurate diagnosis cannot be overstated. Deep learning (DL) strategies are now a critical research field for crop disease diagnoses. One independent system that can diagnose plant illnesses based on their outward manifestations is an example of an intelligent agriculture solution that could address these problems. This work proposes a robust hybrid convolutional neural network (CNN) diagnostic tool for various disorders that may affect tomato leaf tissue. A CNN and an inception module are the two components that make up this hybrid technique. The dataset employed for this study consists of nine distinct categories of tomato diseases and one healthy category sourced from PlantVillage. The findings are promising on the test set, with 99.17% accuracy, 99.23% recall, 99.13% precision, 99.56% AUC, and 99.17% F1-score, respectively. The proposed methodology offers a solution that boasts high performance for the diagnostics of tomato crops in the actual agricultural setting.

Topics & Concepts

Convolutional neural networkCropAgricultureArtificial intelligenceComputer scienceMedical diagnosisQuality (philosophy)Agricultural engineeringF1 scoreField (mathematics)Affect (linguistics)Deep learningMachine learningSet (abstract data type)Precision and recallDiseaseTest setBiotechnologyMedicineMathematicsAgronomyEngineeringBiologyPathologyEcologyEpistemologyPure mathematicsProgramming languageLinguisticsPhilosophySmart Agriculture and AIDate Palm Research StudiesSpectroscopy and Chemometric Analyses