Deep Learning for Plant Classification in Precision Agriculture

Carlos A. Mamani Diaz, Edgar E. Medina Castaneda, Carlos A. Mugruza Vassallo
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引用次数: 9

Abstract

Deep learning has emerged with big data technologies and high-performance computing to create new opportunities for data intensive science in the multidisciplinary agriculture technologies domain. In this research, we present a deep learning classification system of diverse plants, in order to enable precision agriculture applications. This classification problem was achieved thanks to the public dataset “Plant Seedlings Dataset”, which contains images of approximately 960 unique plants belonging to 12 species at several growth stages. The database has been from Aarhus University Flakkebjerg Research Station in collaboration between the University of Southern Denmark and Aarhus University. A classification comparison was used to determinate which of three pre-trained models; InceptionV3, VGG16 and Xception; reach the best accuracy performance for the database used in this work. Results determined that (1) Xception was the best model for plant classification obtaining 86.21%, overcoming other networks in 7.37% with a time processing around 741 seconds. (2) GPU hardware changes the classification model results impacting strongly in their accuracy score.
基于深度学习的精准农业植物分类
深度学习与大数据技术和高性能计算一起出现,为多学科农业技术领域的数据密集型科学创造了新的机会。在这项研究中,我们提出了一个不同植物的深度学习分类系统,以实现精准农业应用。这个分类问题是通过公共数据集“植物幼苗数据集”实现的,该数据集包含了12个物种的大约960种不同生长阶段的植物的图像。该数据库来自南丹麦大学和奥胡斯大学合作的奥胡斯大学Flakkebjerg研究站。分类比较用于确定三个预训练模型中的哪一个;InceptionV3, VGG16和exception;达到本工作中使用的数据库的最佳精度性能。结果表明:(1)Xception是植物分类的最佳模型,处理时间约为741秒,达到86.21%,超过其他网络的处理时间为7.37%;(2) GPU硬件改变了分类模型结果,对分类模型的准确率评分产生了强烈影响。
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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