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Automation in Agriculture by Machine and Deep Learning Techniques: A Review of Recent Developments

Saleem, Muhammad Hammad; Potgieter, Johan; Arif, Khalid Mahmood

Authors

Johan Potgieter

Khalid Mahmood Arif



Abstract

Recently, agriculture has gained much attention regarding automation by artificial intelligence techniques and robotic systems. Particularly, with the advancements in machine learning (ML) concepts, significant improvements have been observed in agricultural tasks. The ability of automatic feature extraction creates an adaptive nature in deep learning (DL), specifically convolutional neural networks to achieve human-level accuracy in various agricultural applications, prominent among which are plant disease detection and classification, weed/crop discrimination, fruit counting, land cover classification, and crop/plant recognition. This review presents the performance of recent uses in agricultural robots by the implementation of ML and DL algorithms/architectures during the last decade. Performance plots are drawn to study the effectiveness of deep learning over traditional machine learning models for certain agricultural operations. The analysis of prominent studies highlighted that the DL-based models, like RCNN (Region-based Convolutional Neural Network), achieve a higher plant disease/pest detection rate (82.51%) than the well-known ML algorithms, including Multi-Layer Perceptron (64.9%) and K-nearest Neighbour (63.76%). The famous DL architecture named ResNet-18 attained more accurate Area Under the Curve (94.84%), and outperformed ML-based techniques, including Random Forest (RF) (70.16%) and Support Vector Machine (SVM) (60.6%), for crop/weed discrimination. Another DL model called FCN (Fully Convolutional Networks) recorded higher accuracy (83.9%) than SVM (67.6%) and RF (65.6%) algorithms for the classification of agricultural land covers. Finally, some important research gaps from the previous studies and innovative future directions are also noted to help propel automation in agriculture up to the next level.

Citation

Saleem, M. H., Potgieter, J., & Arif, K. M. (2021). Automation in Agriculture by Machine and Deep Learning Techniques: A Review of Recent Developments. Precision Agriculture, 22(6), 2053-2091. https://doi.org/10.1007/s11119-021-09806-x

Journal Article Type Review
Acceptance Date Apr 10, 2021
Online Publication Date Apr 21, 2021
Publication Date Apr 21, 2021
Deposit Date Feb 17, 2024
Journal Precision Agriculture
Print ISSN 1385-2256
Electronic ISSN 1573-1618
Publisher Springer Verlag
Peer Reviewed Peer Reviewed
Volume 22
Issue 6
Pages 2053-2091
DOI https://doi.org/10.1007/s11119-021-09806-x
Keywords General Agricultural and Biological Sciences