Abstract

Abstract The assumption of the European Union Common Agricultural Policy is to maintain good agricultural practices for sustainability in the environment. A number of requirements are imposed on farmers, including the maintenance of permanent grassland, fallow land or crop diversification. To meet these requirements, the European Union guarantees subsidies, but at the same time fields must be monitored focusing on crop identification. The limitation of field inspection and substituting it with crop recognition using satellite images could increase the effectiveness of this procedure. The application of satellite imagery in automatic detection and identification of dominant crops over a large area seems to be technically and economically sound. The paper discusses the concept and the results of automatic classification based on a Random Forests classifier performed on multitemporal images of Sentinel-2 and Landsat-8. A test site was established in a complex agricultural structure with long and narrow parcels in the south-eastern part of Poland. Time-series images acquired during the growing season 2016 were used for multispectral classification in different configurations: for Sentinel-2 and Landsat-8 separately and for both sensors integrated. Different Random Forests approaches and post-processing methods were examined based on independent data from farmers’ declarations records, reaching the best accuracy of over 90% for crops like winter or spring cereals. Overall accuracy of the classification ranged from 72% to 91% depending on the classification variant. The elaborated scheme is novel in the context of Polish complex agricultural structure and smallholders.

Highlights

  • The ability to recognize and to map crops is essential to obtaining information about what and when is grown in predefined areas

  • Low Overall Accuracy (OA) values are due to the poor results for non-dominant crops, permanent grassland and fallow land, which is further discussed in detail

  • For the variant with 8 dominant crops, the overall accuracy was approximately 12% higher for the parcel-based approach (OA = 78%) than for the pixel-based approach (OA = 66%)

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Summary

Introduction

The ability to recognize and to map crops is essential to obtaining information about what and when is grown in predefined areas. Such information can be used for forecasting yield, for example, the MARS Crop Yield Forecasting System (MARS Bulletins, 2020), statistical analysis of crop production (Ray et al, 2013; Łączyński, 2014), crop rotation management, assessment of damage to crops caused by atmospheric phenomena (Wicka, Parlińska, 2019) or monitoring of agricultural activities (Ji et al, 2018; Sonobe et al, 2017). In order to standardize and automate the crop measurements, remote sensing techniques can be utilised They can provide common data collection and more robust strategies for information extraction. The use of satellite images to derive information about the crop types is reasonable and can be used to monitor greening practices

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