基于机器学习的植物病害检测研究进展

H. Pardede, Endang Suryawati, Dikdik Krisnandi, R. S. Yuwana, Vicky Zilvan
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引用次数: 7

摘要

目前,将机器学习技术应用于农产品的管理和监测正在引起人们的极大兴趣。其中之一是植物病害检测。植物病害是造成作物损失的主要原因。植物病害自动检测系统的存在,对于尽早预测植物病害,减少作物损失至关重要。本文综述了机器学习技术在植物病害检测中的研究进展。在这个领域已经提出了各种方法。在这篇综述中,我们将它们分为两类:专注于为浅层机器学习架构(如SVM)寻找良好特征的作品,以及专注于应用深度机器学习架构(如深度卷积神经网络(CNN))的作品。对于后者,我们观察到这些作品要么使用CNN作为分类器,要么使用CNN作为特征学习。我们的调查显示,虽然(CNN)已经成为该领域的领先技术,取代了像SVM这样的浅层架构,但仍然存在许多挑战。首先是对环境条件的稳健性问题。其次是如何用有限的数据处理大量的数据和疾病。
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Machine Learning Based Plant Diseases Detection: A Review
Currently, applying machine learning technologies for management and monitoring of agricultural products are gaining significant interests. One of them is for plant diseases detection. Plant diseases are major cause of crop losses. The existence of automatic plant diseases detection is essential to predict the plant diseases as early as possible, and hence, reducing the crop losses. In this paper, we presents a review of advancement of machine learning technologies for plant diseases detection. Various approaches have been proposed in the field. In this review, we group them into two: works that focus on finding good features for shallow machine learning architectures such as SVM, those that focus on applying deep architectures of machine learning such as deep convolutional neural networks (CNN). For the later, we observe that the works either applied CNN as classifier or as feature learning. Our survey shows that while (CNN), have become the lead technologies in the field, replacing shallow architectures like SVM, many challenges still remain. First is the issue of robustness against environmental conditions. Second in on how to deal large variety of data and diseases with limited number of data.
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