Abstract

Crop monitoring is crucial to understand crop production changes, agronomic practice decision-support, pests/diseases mitigation, and developing climate change adaptation strategies. Banana, an important staple food and cash crop in East Africa, is threatened by Banana Xanthomonas Wilt (BXW) disease. Yet, there is no up-to-date information about the spatial distribution and extent of banana lands, especially in Rwanda, where banana plays a key role in food security and livelihood. Therefore, delineation of banana-cultivated lands is important to prioritize resource allocation for optimal productivity. We mapped the spatial extent of smallholder banana farmlands by acquiring and processing high-resolution (25 cm/px) multispectral unmanned aerial vehicles (UAV) imageries, across four villages in Rwanda. Georeferenced ground-truth data on different land cover classes were combined with reflectance data and vegetation indices (NDVI, GNDVI, and EVI2) and compared using pixel-based supervised multi-classifiers (support vector models-SVM, classification and regression trees-CART, and random forest–RF), based on varying ground-truth data richness. Results show that RF consistently outperformed other classifiers regardless of data richness, with overall accuracy above 95%, producer’s/user’s accuracies above 92%, and kappa coefficient above 0.94. Estimated banana farmland areal coverage provides concrete baseline for extension-delivery efforts in terms of targeting banana farmers relative to their scale of production, and highlights opportunity to combine UAV-derived data with machine-learning methods for rapid landcover classification.

Highlights

  • Agricultural production is critical for growth in many developing economies [1] and is indispensable for food security in sub-Saharan Africa (SSA)

  • Reflectance values were extracted from the multispectral bands of the imageries covering the five land cover classes, and the vegetation indices were computed for EVI2, Normalized Difference Vegetation Index (NDVI), and Green Normalized Difference Vegetation Index (GNDVI)

  • This research was conducted as a study focused on four banana-producing villages in Rwanda, it demonstrates the potential to adapt unmanned aerial vehicles (UAV) as a tool to support the national framework for agricultural assessment

Read more

Summary

Introduction

Agricultural production is critical for growth in many developing economies [1] and is indispensable for food security in sub-Saharan Africa (SSA). The world’s population is gradually increasing and projected to reach 9 billion by the year 2050 [2]. Considering that approximately 815 million people in the world are chronically undernourished [2], it is imperative to address extant food insecurity challenges by increasing agricultural production (to the tune of 50% more) to feed the growing population [2]. The need to increase production is often constrained by resource limitations, production inefficiencies, and natural/human threats in many smallholder farming systems [3]. Sustainable management of current cropland areas is important to improve productivity and address yield gaps [4]

Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call