Assessing the Influence of Tillage on Maize Performance Using Unmanned Aerial Vehicle Imagery
Loading...
Files
Date
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
University of Cape Coast
Abstract
Maize is a staple food in Sub-Saharan Africa, and tillage is widely used to boost its yield, though it affects soil and the environment both positively and negatively. To support farmers and policymakers, a data-driven approach using UAV technology was introduced. This study was conducted for two seasons in a randomized complete block design with four treatments (Harrowing only, Ploughing only, Ploughing and Harrowing, and No-tillage). The results showed that No-tillage had the lowest growth parameters, while Ploughing and Harrowing recorded the highest in terms of LAI (1.50–1.75), stem diameter (20–22.5 mm), plant height (165–175 cm), and yield (7.20–10.93 t/ha biomass, 4.619–5.67 t/ha grain yield). Despite its lower yields, No-tillage showed the highest yield improvement (+1.11 t/ha). UAVs imagery with Yolov8-small achieved high germination rate detection (mAP50: 0.89–0.95) and accurate plant height estimation (RMSE < 7 cm, R²: 0.98–0.99). For LAI estimation, UAV technology coupled with Huber regression model achieved R² scores of 0.800.94 and RMSE as low as 0.14, and coupled with Gradient Boosting Machines reached R² of 0.87 and RMSE of 0.281 t/ha at the vegetative stage for Yield prediction. Ploughing and Harrowing is recommended for short-term tillage, while No-tillage is better for the long term. UAV imagery with machine learning reliably monitors maize and predicts yield. Future research should explore the long-term effects of No-tillage, UAV-based stem girth estimation, and the cost-benefit of UAV adoption in small-scale farming.
Description
xiv,142p:, ill
