基于DL方法的诊断方法,从患病植物的叶片中检测缺元素

M. Elleuch, Fatma Marzougui, M. Kherallah
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引用次数: 1

摘要

农业的主要问题是植物叶片的病害和农业害虫的蔓延。因此,我们将介绍如何处理植物的某些疾病现象,或如何预防和采取预防措施,采用现代方法诊断患病植物的叶片元素不足。因此,深度学习是检测叶子属性的最合适的解决方案,对于大面积作物的跟踪以及在植物叶子上出现叶子特征的症状时自动检测是必不可少的。在本文中,我们明确了VGG-16的迁移学习(TL)架构和其他架构,如ResNet,使用一组基于健康和不健康植物叶片的增加数据来检测由于缺乏成分而在叶子中遭受疾病的植物。实验结果表明,与其他已报道的方法相比,我们提出的模型显著提高了检测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnostic method based DL approach to detect the lack of elements from the leaves of diseased plants
The main problem in agriculture is the attack of diseases on the leaves of plants and the spread of agricultural pests. For this reason, we will present how to treat certain phenomena of disease in plants, or how to prevent and do the precautionary measures to adopt a modern method to diagnose the deficiency of the leaves elements of the diseased plants. Thus, the deep learning is the most appropriate solution to detect the properties of the leaves and is essential in the tracking of large fields of crops as well as automatically detecting the symptoms of the leaves characteristics as soon as they appear on the plants leaves. In this paper, we clarified the Transfer Learning (TL) architecture for VGG-16 and the other architecture like ResNet to detect plants that suffer from diseases in the sheet due to a lack of ingredient using a set of increased data based on the leaves of healthy and unhealthy plants alike. The experimental results show that significant detection accuracy improvement has been achieved thanks to our proposed model compared to other reported methods.
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