Software Application In Early Blight Detection In Tomatoes Using Modified Mobilenet Architecture

dc.contributor.authorAppati, J.K.
dc.contributor.authorWellu, Z.P.
dc.contributor.authorAmissah, D.K.
dc.contributor.authorBoante, L.M.
dc.date.accessioned2026-05-13T10:36:25Z
dc.date.issued2026-01-25
dc.descriptionResearch Article
dc.description.abstractThis study presents an automated framework for early blight detection in tomato plants using a modified MobileNet architecture. Addressing the limitations of traditional labor-intensive methods, this study proposes a two-stage pipeline combining (1) transfer learning with depthwise separable convolutions for efficient feature extraction and (2) a meta-learned ensemble of Random Forest, SVM, and Gradient Boosting classifiers to handle real-world variability in lighting and environmental conditions. The approach introduces two custom convolutional layers (Custom_Feature_Extraction_ Block) that improve F1-score by + 3.8 points over the MobileNet baseline, with the ensemble contributing an additional + 2.1 points. Evaluated on a balanced PlantVillage dataset (1,982 images) with extensive augmentation to simulate variable lighting and orientations, the system achieved up to 100% accuracy with selected classifiers on a held-out validation subset of 30 images under controlled conditions. To assess generalization, we further validated the framework on an independent dataset (tomato_dataset_v2, 30, 609 images, 10 classes) containing field-acquired tomato leaf images, where the model attained 94.5% accuracy, confirming robustness beyond control environments. Comparative analysis with 10 recent methods demonstrates superior accuracy-efficiency trade-offs, offering practical on-device decision support for smallholder farmers. The framework’s lightweight design (4.2 M parameters, 23 ms/image on Raspberry Pi 4) and validated scalability underscore its potential for mobile and drone-based agricultural deployment. This addresses critical needs in global food security through accessible plant disease detection.
dc.description.sponsorshipNone
dc.identifier.citationAppati, J. K., Wellu, Z. P., Amissah, D. K., & Boante, L. M. (2026). Software application in early blight detection in tomatoes using modified MobileNet architecture. Scientific Reports.
dc.identifier.urihttps://doi.org/10.1038/s41598-025-24101-9
dc.identifier.urihttps://ugspace.ug.edu.gh/handle/123456789/45068
dc.language.isoen
dc.publisherScientific Reports
dc.subjectMobileNet
dc.subjectCustom_Feature_Extraction_Block
dc.subjectSupport vector machine
dc.subjectRandom forest
dc.subjectGradient boosting
dc.subjectClassifier
dc.subjectEnsemble
dc.subjectOverfitting
dc.titleSoftware Application In Early Blight Detection In Tomatoes Using Modified Mobilenet Architecture
dc.typeArticle

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