Abstract

Reducing food insecurity in developing countries is one of the crucial targets of the Sustainable Development Goals (SDGs). Smallholder farmers play a crucial role in combating food insecurity. However, local planning agencies and governments do not have adequate spatial information on smallholder farmers, and this affects the monitoring of the SDGs. This study utilized Sentinel-1 multi-temporal data to develop a framework for mapping smallholder maize farms and to estimate maize production area as a parameter for supporting the SDGs. We used Principal Component Analysis (PCA) to pixel fuse the multi-temporal data to only three components for each polarization (vertical transmit and vertical receive (VV), vertical transmit and horizontal receive (VH), and VV/VH), which explained more than 70% of the information. The Support Vector Machine (SVM) and Extreme Gradient Boosting (Xgboost) algorithms were used at model-level feature fusion to classify the data. The results show that the adopted strategy of two-stage image fusion was sufficient to map the distribution and estimate production areas for smallholder farms. An overall accuracy of more than 90% for both SVM and Xgboost algorithms was achieved. There was a 3% difference in production area estimation observed between the two algorithms. This framework can be used to generate spatial agricultural information in areas where agricultural survey data are limited and for areas that are affected by cloud coverage. We recommend the use of Sentinel-1 multi-temporal data in conjunction with machine learning algorithms to map smallholder maize farms to support the SDGs.

Highlights

  • The United Nations in 2015 agreed on 17 Sustainable Development Goals (SDGs) with the aim of ensuring peace and prosperity for the people and the planet [1]

  • These results show that the Support Vector Machine (SVM) and Xgboost produced an acceptable performance in mapping smallholder farms and illustrated the capability of two-stage image fusion employed in this study

  • This study presented Sentinel-1 multi-temporal data for mapping smallholder maize farms’ spatial distribution and estimated production areas

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Summary

Introduction

The United Nations in 2015 agreed on 17 Sustainable Development Goals (SDGs) with the aim of ensuring peace and prosperity for the people and the planet [1]. Whelen and Siqueira [22] used comprehensive Sentinel-1 multi-temporal data to identify agricultural land cover types They concluded that vertical transmit and vertical receive (VV) and vertical transmit and horizontal receive (VH) polarizations individually and combined were able to provide an accuracy of above 90% over North Dakota. We used multi-temporal images of Sentinel-1 to develop a framework to map smallholder maize farms using well-known machine learning algorithms Model-level fusion was done; this second stage uses sufficient principal components for all the reduced polarizations as input into the classifying algorithms This approach has been used mainly in hyperspectral remote sensing image classification or change detection analysis [26,27]. This region is dominated by smallholder maize farms and most farmers farm for subsistence

Literature Review
Study Area and Field Data Collection
Design
Accuracy Assessment and Smallholder Maize Area Estimation
Accuracy Assessment
Variable Importance
Mapping and Area Estimate for Smallholder Maize Farms
Conclusions
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