Methodology for Classifying Diseases in Plants Using Convolutional Neural Networks

Michel Costa, Vanessa Castro Rezende, Cledisson Martins, Adam Santos
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Abstract

Convolutional neural networks (CNNs) are one of the deep learning techniques that, due to the computational advance of the last few years, have leveraged the area of computer vision, allowing substantial gains in the most varied classification problems, especially those involving digital images. In this context, this paper aims to propose a methodology for the classification of multiple pathologies related to different plant species. Initially, this methodology involved the image processing and the generation of ten new databases, varying between 50 and 66 classes with greater representation. After training the models (VGG16, RestNet101v1, ResNet101v2, ResNetXt50, and DenseNet169), a comparative study was conducted based on widely used classification metrics, such as test accuracy, f1-score, and area under the curve. To attest the significance of the results, Friedman’s nonparametric statistical test and two post-hoc procedures were performed, which demonstrated that ResNetXt50 and DenseNet169 obtained superior performances when compared with VGG16 and ResNets.
基于卷积神经网络的植物病害分类方法
卷积神经网络(cnn)是一种深度学习技术,由于过去几年计算的进步,它利用了计算机视觉领域,在最多样化的分类问题上取得了实质性的进展,特别是那些涉及数字图像的分类问题。在此背景下,本文旨在提出一种与不同植物物种相关的多种病理分类的方法。最初,这种方法涉及图像处理和生成10个新数据库,这些数据库在50到66个类别之间变化,具有更大的代表性。在对模型(VGG16、RestNet101v1、ResNet101v2、ResNetXt50、DenseNet169)进行训练后,基于测试精度、f1-score、曲线下面积等常用分类指标进行对比研究。为了证明结果的显著性,我们进行了Friedman的非参数统计检验和两个事后处理,结果表明,与VGG16和ResNets相比,ResNetXt50和DenseNet169获得了更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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