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Deep SqueezeNet learning model for diagnosis and prediction of maize leaf diseases

Prasannavenkatesan TheerthagiriDepartment of Computer Science and Engineering, MURTI Research Centre, GITAM School of Technology, GITAM University, Bengaluru, IndiaA. Usha RubyComputer Science and Engineering, SRMIST Ramapuram, Chennai, IndiaJ. George Chellin ChandranKing’s Academy, Chennai, IndiaTanvir Habib SardarDepartment of Computer Science and Engineering, GITAM School of Technology , GITAM University, Bengaluru, IndiaAhamed Shafeeq B. M.Department of Computer Science and Engineering, Manipal Institute of Technology, Manipal Academy of Higher Education, Manipal, India
2024en
ABI

Аннотация

Abstract The maize leaf diseases create severe yield reductions and critical problems. The maize leaf disease should be discovered early, perfectly identified, and precisely diagnosed to make greater yield. This work studies three main leaf diseases: common rust, blight, and grey leaf spot. This approach involves pre-processing, including sampling and labelling, while ensuring class balance and preventing overfitting via the SMOTE algorithm. The maize leaf dataset with augmentation was used to classify these diseases using several deep-learning pre-trained networks, including VGG16, Resnet34, Resnet50, and SqueezeNet. The model was evaluated using a maize leaf dataset that included various leaf classes, mini-batch sizes, and input sizes. Performance measures, recall, precision, accuracy, F1-score, and confusion matrix were computed for each network. The SqueezeNet learning model produces an accuracy of 97% in classifying four different classes of plant leaf datasets. Comparatively, the SqueezeNet learning model has improved accuracy by 2–5% and reduced the mean square error by 4–11% over VGG16, Resnet34, and Resnet50 deep learning models.

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