Computer Vision Framework for Wheat Disease Identification and Classification Using Jetson GPU Infrastructure

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Abstract

Diseases have adverse effects on crop production and yield loss. Various diseases such as leaf rust, stem rust, and strip rust can affect yield quality and quantity for a studied area. In addition, manual wheat disease identification and interpretation is time-consuming and cumbersome. Currently, decisions related to plants mainly rely on the level of expertise in the domain. To resolve these challenges and to identify wheat disease as early as possible, we implemented different deep learning models such as Inceptionv3, Resnet50, and VGG16/19. This research was conducted in collaboration with Bishoftu Agricultural Research Institute, Ethiopia. Our main objective was to automate plant-disease identification using advanced deep learning approaches and image data. For the experiment, RGB image data were collected from the Bishoftu area. From the experimental results, the VGG19 model classified wheat disease with 99.38% accuracy.

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Aboneh, T., Rorissa, A., Srinivasagan, R., & Gemechu, A. (2021). Computer Vision Framework for Wheat Disease Identification and Classification Using Jetson GPU Infrastructure. Technologies, 9(3). https://doi.org/10.3390/technologies9030047

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