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利用深度学习技术识别棉花叶片损伤

Identification of Cotton Leaf Lesions Using Deep Learning Techniques.

机构信息

Faculty of Agricultural Engineering of the University of Campinas, FEAGRI/UNICAMP, Campinas 13083-875, Brazil.

Institute of Agricultural Sciences of the Federal University of the Jequitinhonha and Mucuri Valleys, ICA/UFVJM, Unaí 38610-000, Brazil.

出版信息

Sensors (Basel). 2021 May 3;21(9):3169. doi: 10.3390/s21093169.

Abstract

The use of deep learning models to identify lesions on cotton leaves on the basis of images of the crop in the field is proposed in this article. Cultivated in most of the world, cotton is one of the economically most important agricultural crops. Its cultivation in tropical regions has made it the target of a wide spectrum of agricultural pests and diseases, and efficient solutions are required. Moreover, the symptoms of the main pests and diseases cannot be differentiated in the initial stages, and the correct identification of a lesion can be difficult for the producer. To help resolve the problem, the present research provides a solution based on deep learning in the screening of cotton leaves which makes it possible to monitor the health of the cotton crop and make better decisions for its management. With the learning models GoogleNet and Resnet50 using convolutional neural networks, a precision of 86.6% and 89.2%, respectively, was obtained. Compared with traditional approaches for the processing of images such as support vector machines (SVM), Closest k-neighbors (KNN), artificial neural networks (ANN) and neuro-fuzzy (NFC), the convolutional neural networks proved to be up to 25% more precise, suggesting that this method can contribute to a more rapid and reliable inspection of the plants growing in the field.

摘要

本文提出了一种基于田间作物图像识别棉花叶片病变的深度学习模型。棉花在世界上大部分地区都有种植,是经济上最重要的农作物之一。它在热带地区的种植使其成为各种农业病虫害的目标,因此需要有效的解决方案。此外,主要病虫害的症状在初期无法区分,生产者正确识别病变可能较为困难。为了解决这个问题,本研究提出了一种基于深度学习的棉花叶片筛选解决方案,使监测棉花作物的健康状况并为其管理做出更好的决策成为可能。使用卷积神经网络的 GoogleNet 和 Resnet50 学习模型,分别获得了 86.6%和 89.2%的精度。与传统的图像处理方法(如支持向量机(SVM)、最近邻(KNN)、人工神经网络(ANN)和神经模糊(NFC))相比,卷积神经网络的精度提高了高达 25%,这表明该方法可以促进更快速、更可靠地检查田间生长的植物。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a349/8124293/71a1c667d7ae/sensors-21-03169-g001.jpg

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