Abstract

In this upcoming Common Agricultural Policy (CAP) reform, the use of satellite imagery is taking an increasing role for improving the Integrated Administration and Control System (IACS). Considering the operational aspect of the CAP monitoring process, the use of Sentinel-1 SAR (Synthetic Aperture Radar) images is highly relevant, especially in regions with a frequent cloud cover, such as Belgium. Indeed, SAR imagery does not depend on sunlight and is barely affected by the presence of clouds. Moreover, the SAR signal is particularly sensitive to the geometry and the water content of the target. Crop identification is often a pre-requisite to monitor agriculture at parcel level (ploughing, harvest, grassland mowing, intercropping, etc.) The main goal of this study is to assess the performances and constraints of a SAR-based crop classification in an operational large-scale application. The Random Forest object-oriented classification model is built on Sentinel-1 time series from January to August 2020 only. It can identify crops in the Walloon Region (south part of Belgium) with high performance: 93.4% of well-classified area, representing 88.4% of the parcels. Among the 48 crop groups, the six most represented ones get a F1-score higher or equal to 84%. Additionally, this research documents how the classification performance is affected by different parameters: the SAR orbit, the size of the training dataset, the use of different internal buffers on parcel polygons before signal extraction, the set of explanatory variables, and the period of the time series. In an operational context, this allows to choose the right balance between classification accuracy and model complexity. A key result is that using a training dataset containing only 3.2% of the total number of parcels allows to correctly classify 91.7% of the agricultural area. The impact of rain and snow is also discussed. Finally, this research analyses how the classification accuracy depends on some characteristics of the parcels like their shape or size. This allows to assess the relevance of the classification depending on those characteristics, as well as to identify a subset of parcels for which the global accuracy is higher.

Highlights

  • IntroductionThe legal and technical framework to make use of the advantages of Earth Observation data in the context of Common Agricultural Policy (CAP) controls was provided in 2018 by the European Commission (EC)

  • Two kinds of Overall Accuracies are computed: the OAarea which is equal to the percentage of well classified area and the OAnum which is equal to the percentage of the number of well classified fields

  • The present analysis shows that 5 of the 6 most represented crop groups can be recognized before their harvesting dates with a F1-score higher than 89%

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Summary

Introduction

The legal and technical framework to make use of the advantages of Earth Observation data in the context of CAP controls was provided in 2018 by the EC. This covers data coming from the EU’s Copernicus Sentinel satellites. The actual On-the-Spot-Checks (OTSC) control system is based on a yearly verification done by each EU Member State, who must carry out controls on at least 5% of the farms applying for subsidies. The OTSC are fulfilled either by visiting farms, by interpreting

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