植物病害检测的深度CNN方法

Fatma Marzougui, M. Elleuch, M. Kherallah
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引用次数: 27

摘要

植物的诊断由专家进行目视检查,如有必要,生物检查是第二选择。它们通常既昂贵又耗时。这启发了几种基于叶子图像来检测植物枯萎病的计算机方法。我们将计算机方法应用于基于人工神经网络的深度学习系统,该分支还允许早期检测植物疾病,通过应用熟悉一些著名架构的卷积神经网络(cnn),特别是“ResNet”架构,使用包含健康和患病叶子图像的增强数据集(每片叶子都是手动切割并放置在统一的背景上)在研究环境中具有可接受的准确率。这种深度学习技术在各种目标检测问题上表现出了很好的性能。该模型通过将图像分为两类(无病)和(患病)来实现其作用。结果表明,所开发的系统比现有的检测系统具有更好的检测性能。最后,为了比较它们的性能,我们使用Anaconda 2019.10下的实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep CNN Approach for Plant Disease Detection
The diagnosis of the plants is carried out with a visual inspection by experts and a biological examination is the second choice if necessary. They are usually expensive and time consuming. This inspired several computer methodologies to detect plant blights based on their leaf images. We apply a computer methodology on Deep Learning systems based on artificial neural networks, this branch also allows for the early detection of plant diseases, by applying convolutional neural networks (CNNs) familiar with some of the famous architectures, notably the “ResNet” architecture, using an augmented dataset containing images of healthy and diseased leaves (each leaf is manually cut and placed on a uniform background) with acceptable accuracy rates in the research environment. This Deep Learning technique has shown very good performance for various object detection problems. The model fulfills its role by classifying images into two categories (disease-free) and (diseased). According to the results obtained, the developed system achieves better detection performances than those proposed in the state of the art. Finally, to compare their performances, we use the implementation under Anaconda 2019.10.
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