残差神经网络的作物病害识别与诊断

Aritra Nandi, Shivam Yadav, Yashasvi Jaiswal
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引用次数: 0

摘要

农作物病害是农业部门的一个严重问题。为了预防作物病害,我们必须在早期发现病害。现在出现了各种各样的技术来确定农作物的特定病害。深度学习是检测作物病害的最佳方法之一。本研究包括一个深度学习框架来分类健康和患病的作物。对于图像识别,ResNet是使用Keras应用程序构建的。它是一种深度残差学习方法,其框架易于训练网络。我们使用的数据集由14组不同作物的87,354张图像组成,包括健康和患病的图像。数据集是使用基于云的AR架构收集的。经过训练的模型架构使我们成功地找到患病作物图像的准确率达到99.53%。该模型的高成功率使其在实际应用中非常有用和有效。“利用深度学习进行作物病害诊断”这一理念的进一步扩展将有助于在实际种植条件下的操作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crop disease recognition and diagnosis using Residual Neural Network
Crop disease is a serious problem in the agricultural sector. To prevent crop disease we have to detect the disease at an early stage. Various technologies are emerging these days to determine specific diseases in crops. Deep Learning is one of the best approaches to detecting crop disease. This research paper includes a deep learning framework to classify healthy and diseased crops. For image recognition, ResNet was built using Keras applications. It is a deep residual learning approach that was used, as its framework is easy for training networks. Our used dataset consists of 87,354 images of 14 different sets of crops including both healthy and diseased images. The dataset was collected using a cloud-based architecture with AR. The model architecture that was trained gives us an accuracy of 99.53% in finding the diseased crop images successfully. The high success rate of this model makes it very useful and most effective in real-life applications. The further expansion of this idea “Crop disease diagnosis using deep learning” will help contribute to the operation in real cultivation conditions.
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