通过先进的挤压-激发深度学习模型检测草莓病害

Jiayi Wu;Vahid Abolghasemi;Mohammad Hossein Anisi;Usman Dar;Andrey Ivanov;Chris Newenham
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引用次数: 0

摘要

本文提出了一种创新的深度学习驱动框架,适用于识别草莓植物的病害。我们的方法包括一个全面的嵌入式电子系统,其中包含传感器数据采集和植物图像捕捉。这些图像通过专用网关无缝传输到云端,以便进行后续分析。该研究引入了一个新模型 ResNet9-SE,这是一种改进的 ResNet 架构,其特点是在网络中战略性地设置了两个挤压激励 (SE) 块,以提高性能。其主要优势是在保持高诊断准确性的同时,减少了参数和内存占用。我们利用内部收集的数据和公开数据集对所提出的模型进行了评估。实验结果表明,ResNet9-SE 模型的分类准确率非常高(99.7%),而且计算成本显著降低,因此非常适合在嵌入式系统中部署。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Strawberry Disease Detection Through an Advanced Squeeze-and-Excitation Deep Learning Model
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.
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