Review of the State of the Art of Deep Learning for Plant Diseases: A Broad Analysis and Discussion

Plants - Tập 9 Số 10 - Trang 1302
Reem Ibrahim Hasan1,2, Salim Yusuf2, Laith Alzubaidi1,3
1Al-Nidhal Campus, University of Information Technology & Communications, Baghdad, 00964, Iraq
2School of Computing, Faculty of Engineering, Universiti Teknologi Malaysia, Skudai, Johor, 81310, Malaysia
3Faculty of Science & Engineering, Queensland University of Technology, Brisbane, QLD, 4000, Australia

Tóm tắt

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.

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