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Wheat Diseases Classification and Localization Using Convolutional Neural Networks and GradCAM Visualization

机译:基于卷积神经网络和GradCAM可视化的小麦病害分类和定位

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The world has been witnessing a population boom that has several implications including food security. Wheat is one of the world’s most important crops in terms of production and consumption, and demand for it is increasing. On the other hand, diseases can damage the abundance and the quality of the crop, so this needs to be revealed through advanced methods. In recent years, along with the various technological developments, using Convolutional Neural Networks (CNN) has proved to be showing great results in many image classification tasks. However, deep learning models are generally considered as black boxes and it is difficult to understand what the model has learned. The purpose of this article is to detect diseases from wheat images using CNNs and to use visualization methods to understand what these models have learned. For this reason, a wheat database has been collected by CRA-W (Walloon Agricultural Research Center), which contains 1163 images and is classified into two groups namely sick and healthy. Moreover, we propose to use the mask R-CNN for segmentation and extraction of wheat spikes from the background. Furthermore, a visualization and interpretation method, namely Gradient-weighted Class Activation Mapping (GradCAM), is used to locate the disease on the wheat spikes in a non-supervised way. GradCAM is actually used generally to highlight the most important regions from the CNN model’s viewpoint that are used to perform the classification.
机译:世界目睹了人口激增,其中包括粮食安全等诸多方面。就产量和消费量而言,小麦是世界上最重要的作物之一,对小麦的需求也在不断增长。另一方面,疾病会损害作物的丰度和品质,因此这需要通过先进的方法来揭示。近年来,随着各种技术的发展,使用卷积神经网络(CNN)已被证明在许多图像分类任务中显示了出色的成果。但是,深度学习模型通常被认为是黑匣子,很难理解该模型学到了什么。本文的目的是使用CNN从小麦图像中检测疾病,并使用可视化方法来了解这些模型学到的知识。因此,CRA-W(瓦隆农业研究中心)已经收集了一个小麦数据库,其中包含1163张图像,并分为健康和健康两类。此外,我们建议使用遮罩R-CNN从背景中分割和提取小麦穗。此外,使用可视化和解释方法,即梯度加权类别激活映射(GradCAM),以无监督的方式将疾病定位在小麦穗上。实际上,GradCAM通常用于从CNN模型的角度突出显示用于执行分类的最重要区域。

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