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Strawberry Disease Detection Through an Advanced Squeeze-and-Excitation Deep Learning Model

Jiayi Wu, Vahid Abolghasemi, Mohammad Hossein Anisi, Usman Dar, А. В. Иванов, Chris Newenham

2024IEEE Transactions on AgriFood Electronics36 citationsDOI

Abstract

In this article, an innovative deep learning-driven framework, adapted for the identification of diseases in strawberry plants, is proposed. Our approach encompasses a comprehensive embedded electronic system, incorporating sensor data acquisition and image capturing from the plants. These images are seamlessly transmitted to the cloud through a dedicated gateway for subsequent analysis. The research introduces a novel model, ResNet9-SE, a modified ResNet architecture featuring two squeeze-and-excitation (SE) blocks strategically positioned within the network to enhance performance. The key advantage gained is achieving fewer parameters and occupying less memory while preserving a high diagnosis accuracy. The proposed model is evaluated using in-house collected data and a publicly available dataset. The experimental outcomes demonstrate the exceptional classification accuracy of the ResNet9-SE model (99.7%), coupled with significantly reduced computation costs, affirming its suitability for deployment in embedded systems.

Topics & Concepts

Deep learningExcitationArtificial intelligenceComputer scienceEngineeringElectrical engineeringSmart Agriculture and AIPlant Pathogens and Fungal DiseasesPlant Disease Management Techniques
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