Hasan Reem Ibrahim, Yusuf Suhaila Mohd, Alzubaidi Laith
School of Computing, Faculty of Engineering, Universiti Teknologi Malaysia, Skudai, Johor 81310, Malaysia.
Al-Nidhal Campus, University of Information Technology & Communications, Baghdad 00964, Iraq.
Plants (Basel). 2020 Oct 1;9(10):1302. doi: 10.3390/plants9101302.
Deep learning (DL) represents the golden era in the machine learning (ML) domain, and it has gradually become the leading approach in many fields. It is currently playing a vital role in the early detection and classification of plant diseases. The use of ML techniques in this field is viewed as having brought considerable improvement in cultivation productivity sectors, particularly with the recent emergence of DL, which seems to have increased accuracy levels. Recently, many DL architectures have been implemented accompanying visualisation techniques that are essential for determining symptoms and classifying plant diseases. This review investigates and analyses the most recent methods, developed over three years leading up to 2020, for training, augmentation, feature fusion and extraction, recognising and counting crops, and detecting plant diseases, including how these methods can be harnessed to feed deep classifiers and their effects on classifier accuracy.
深度学习(DL)代表了机器学习(ML)领域的黄金时代,并且已逐渐成为许多领域的主导方法。它目前在植物病害的早期检测和分类中发挥着至关重要的作用。在该领域使用ML技术被视为给种植生产力部门带来了显著改善,特别是随着DL的近期出现,其似乎提高了准确率。最近,许多DL架构已与可视化技术一起实施,这些可视化技术对于确定症状和分类植物病害至关重要。本综述调查并分析了截至2020年的三年中开发的用于训练、增强、特征融合与提取、作物识别与计数以及植物病害检测的最新方法,包括如何利用这些方法为深度分类器提供数据以及它们对分类器准确性的影响。