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Mapping Maize Fields by Using Multi-Temporal Sentinel-1A and Sentinel-2A Images in Makarfi, Northern Nigeria, Africa

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TLDR
The outcomes indicate the robustness of the RF or SVM methods to produce high-resolution maps of maize for subsequent application from agronomists, policy planners, and the government, because such information is lacking in the study area.
Abstract
A timely and accurate crop type mapping is very significant, and a prerequisite for agricultural regions and ensuring global food security. The combination of remotely sensed optical and radar datasets presents an opportunity for acquiring crop information at relative spatial resolution and temporal resolution adequately to capture the growth profiles of various crop species. In this paper, we employed Sentinel-1A (S-1) and Sentinel-2A (S-2) data acquired between the end of June and early September 2016, on a semi-arid area in northern Nigeria. A different set of (VV and VH) SAR and optical (SI and SB) images, illustrating crop phenological development stage, were employed as inputs to the two machines learning Random Forest (RF) and Support Vector Machine (SVM) algorithms to automatically map maize fields. Significant increases in overall classification were shown when the multi-temporal spectral indices (SI) and spectral band (SB) datasets were added with the different integration of SAR datasets (i.e., VV and VH). The best overall accuracy (OA) for maize (96.93%) was derived by using RF classification algorithms with SI-SB-SAR datasets, although the SI datasets for RF and SB datasets for SVM also produced high overall maize classification accuracies, of 97.04% and 97.44%. The outcomes indicate the robustness of the RF or SVM methods to produce high-resolution maps of maize for subsequent application from agronomists, policy planners, and the government, because such information is lacking in our study area.

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Satellite-based data fusion crop type classification and mapping in Rio Grande do Sul, Brazil

TL;DR: In this paper, the authors developed an approach for crop classification in the state of Rio Grande do Sul, Brazil, following the specific goals of evaluating spatial satellite-based features to guide crop data collection, testing transfer learning model with subsequent growing season data, examining accuracy in early-season prediction model, and lastly, developing a crop classification model for estimating large scale crop area.
Journal ArticleDOI

Mapping Crop Types and Cropping Systems in Nigeria with Sentinel-2 Imagery

TL;DR: In this article, the authors provided the first wall-to-wall crop type map for this key agricultural region of Nigeria, based on the Framework for Operational Radiometric Correction for Environmental monitoring (FORCE).
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Analyzing urban growth and land cover change scenario in Lagos, Nigeria using multi-temporal remote sensing data and GIS to mitigate flooding

TL;DR: Lagos, Nigeria's economic hub and one of Africa's fastest-growing cities, has experienced remarkable urban growth due to rapid urbanization as mentioned in this paper. But the city has recently faced persistent urban flooding du...
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Machine Learning Classification of Fused Sentinel-1 and Sentinel-2 Image Data towards Mapping Fruit Plantations in Highly Heterogenous Landscapes

TL;DR: In this article , a support vector machine (SVM) and a random forest (RF) classifier were applied to fused data from the two sensors to identify optimal spectral windows to classify fruit trees.
References
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