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Bayesian optimized multimodal deep hybrid learning approach for tomato leaf disease classification

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dc.contributor.author Khan, Bodruzzaman
dc.contributor.author Das, Subhabrata
dc.contributor.author Fahim, Nafis Shahid
dc.contributor.author Banerjee, Santanu
dc.contributor.author Khan, Salma
dc.contributor.author Sadoon, Mohammad Khalid Al
dc.contributor.author Otaibi, Hamad S. Al
dc.contributor.author Reza, Abu
dc.contributor.author Islam, Md. Towfiqul
dc.date.accessioned 2025-11-05T06:24:57Z
dc.date.available 2025-11-05T06:24:57Z
dc.date.issued 2024-09-14
dc.identifier.uri http://dspace.daffodilvarsity.edu.bd:8080/handle/123456789/15460
dc.description Articles en_US
dc.description.abstract Manual identification of tomato leaf diseases is a time consuming and laborious process that may lead to inaccurate results without professional assistance. Therefore, an automated, early, and precise leaf disease recognition system is essential for farmers to ensure the quality and quantity of tomato production by providing timely interventions to mitigate disease spread. In this study, we have proposed seven robust Bayesian optimized deep hybrid learning models leveraging the synergy between deep learning and machine learning for the automated classification of ten types of tomato leaves (nine diseased and one healthy). We customized the popular Convolutional Neural Network (CNN) algorithm for automatic feature extraction due to its ability to capture spatial hierarchies of features directly from raw data and classical machine learning techniques [Random Forest (RF), XGBoost, GaussianNB (GNB), Support Vector Machines (SVM), Multinomial Logistic Regression (MLR), K Nearest Neighbor (KNN)], and stacking for classifications. Additionally, the study incorported a Boruta feature filtering layer to capture the statistically significant features. The standard, research oriented PlantVillage dataset was used for the performance testing, which facilitates benchmarking against prior research and enables meaningful comparisons of classification performance across different approaches. We utilized a variety of statistical classification metrics to demonstrate the robustness of our models. Using the CNN Stacking model, this study achieved the highest classification performance among the seven hybrid models. On an unseen dataset, this model achieved average precision, recall, f1 score, mcc, and accuracy values of 98.527%, 98.533%, 98.527%, 98.525%, and 98.268%, respectively. Our study requires only 0.174 s of testing time to correctly identify noisy, blurry, and transformed images. This indicates our approach’s time efficiency and generalizability in images captured under challenging lighting conditions and with complex backgrounds. Based on the comparative analysis, our approach is superior and computationally inexpensive compared to the existing studies. This work will aid in developing a smartphone app to offer farmers a real time disease diagnosis tool and management strategies. en_US
dc.language.iso en_US en_US
dc.publisher Scopus en_US
dc.subject Tomato leaf disease, en_US
dc.subject Bayesian optimization, en_US
dc.subject Hybrid learning, en_US
dc.subject Machine learning, en_US
dc.subject CNN, en_US
dc.subject Deep learning, Boruta en_US
dc.title Bayesian optimized multimodal deep hybrid learning approach for tomato leaf disease classification en_US
dc.type Article en_US


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