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Dr. mona abdelbaset :: Publications:

Title:
Detecting Plant Disease in Corn Leaf Using EfficientNet Architecture—An Analytical Approach
Authors: Fathimathul Rajeena PP, Aswathy SU, Mohamed A Moustafa, Mona AS Ali
Year: 2023
Keywords: Not Available
Journal: Electronics
Volume: 12
Issue: 8
Pages: Not Available
Publisher: Multidisciplinary Digital Publishing Institute
Local/International: International
Paper Link:
Full paper Not Available
Supplementary materials Not Available
Abstract:

The various corn diseases that affect agriculture go unnoticed by farmers. Each day, more crops fail due to diseases as there is no effective treatment or a way to identify the illness. Common rust, blight, and the northern leaf grey spot are the most prevalent corn diseases. The presence of a disease cannot be accurately detected by simply looking at the plant. This will lead to improper pesticide use, which harms people by bringing on chronic diseases. Therefore, maintaining food security depends on accurate and automatic disease detection. It might be possible to save time and stop crop degradation before it takes place by utilising digital technologies. Hence, applying modern digital technologies to identify the disease in the damaged corn fields automatically will be more advantageous to the farmers. Many academics have recently become interested in deep learning, which has aided in creating an exact and autonomous picture classification scheme. The use of deep learning techniques and their adjustments for detecting corn illnesses can greatly assist contemporary agriculture. To find plant leaf diseases, we employ image acquisition, preprocessing, and classification processes. Preprocessing includes procedures such as reading images, resizing images, and data augmentation. The suggested project is based on EfficientNet and improves the precision of the database of corn leaf diseases by tweaking the variables. Tests are run using DenseNet and Resnet on the test dataset to confirm the precision and robustness of this approach. The recognition accuracy of 98.85% that can be achieved using this method, according to experimental …

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