Weed detection in rainfed maize crops using UAV and planetscope imagery
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Date
Authors
De Villiers, Colette
De Villiers, Colette
Mashaba-Munghemezulu, Zinhle
Chirima, Johannes George
Tesfamichael, Solomon G.
Journal Title
Journal ISSN
Volume Title
Publisher
MDPI
Abstract
Weed invasion of crop fields, such as maize, is a major threat leading to yield reductions
or crop right-offs for smallholder farming, especially in developing countries. A synoptic view and
timeous detection of weed invasions can save the crop. The sustainable development goals (SDGs)
have identified food security as a major focus point. The objectives of this study are to: (1) assess
the precision of mapping maize-weed infestations using multi-temporal, unmanned aerial vehicle
(UAV), and PlanetScope data by utilizing machine learning algorithms, and (2) determine the optimal
timing during the maize growing season for effective weed detection. UAV and PlanetScope satellite
imagery were used to map weeds using machine learning algorithms—random forest (RF) and
support vector machine (SVM). The input features included spectral bands, color space channels, and
various vegetation indices derived from the datasets. Furthermore, principal component analysis
(PCA) was used to produce principal components (PCs) that served as inputs for the classification. In
this study, eight experiments are conducted, four experiments each for UAV and PlanetScope datasets
spanning four months. Experiment 1 utilized all bands with the RF classifier, experiment 2 used all
bands with SVM, experiment 3 employed PCs with RF, and experiment 4 utilized PCs with SVM. The
results reveal that PlanetScope achieves accuracies below 49% in all four experiments. The best overall
performance was observed for experiment 1 using the UAV based on the highest mean accuracy
score (>0.88), which included the overall accuracy, precision, recall, F1 score, and cross-validation
scores. The findings highlight the critical role of spectral information, color spaces, and vegetation
indices in accurately identifying weeds during the mid-to-late stages of maize crop growth, with
the higher spatial resolution of UAV exhibiting a higher precision in the classification accuracy than
the PlanetScope imagery. The most optimal stage for weed detection was found to be during the reproductive stage of the crop cycle based on the best F1 scores being indicated for the maize and
weeds class. This study provides pivotal information about the spatial distribution of weeds in maize
fields and this information is essential for sustainable weed management in agricultural activities.
Description
DATA AVAILABILITY STATEMENT : The PlanetScope data were obtained from the Planet website for academic research.
Keywords
PlanetScope, Maize, Weed detection, Sustainable development goals (SDGs), SDG-02: Zero hunger, SDG-12: Responsible consumption and production, Unmanned aerial vehicle (UAV), Principal component analysis (PCA), Random forest (RF), Support vector machine (SVM)
Sustainable Development Goals
SDG-02:Zero Hunger
SDG-12:Responsible consumption and production
SDG-12:Responsible consumption and production
Citation
De Villiers, C.; Munghemezulu, C.;
Mashaba-Munghemezulu, Z.; Chirima, G.J.; Tesfamichael, S.G.
Weed Detection in Rainfed Maize Crops Using UAV and PlanetScope
Imagery. Sustainability 2023, 15, 13416. https://DOI.org/10.3390/su151813416.