Crop Rotation Modeling for Deep Learning-Based Parcel Classification from Satellite Time Series
Quinton, Félix, Landrieu, Loic
–arXiv.org Artificial Intelligence
The Common Agricultural Policy (CAP) is responsible for allocating agricultural subsidies in the European Union, which nears 50 billion euros each year [36]. Consequently, monitoring the crop types for subsidy allocation represents a significant challenge for payment agencies, which have encouraged the development of automated crop classification tools based on machine learning [24]. In particular, The Sentinels for Common Agricultural Policy (Sen4CAP) project [19] aims to provide EU member states with algorithmic solutions and best practice studies on crop monitoring based on satellite data from the Sentinel constellation [10]. Despite the inherent difficulty of differentiating between the complex growth patterns of plants, this task is made possible by the nearly limitless access to data and annotations. Indeed, Sentinel-2 offers multi-spectral observations at a high revisit time of five days on average, which are particularly appropriate for characterizing the complex spectral and temporal characteristics of crop phenology.
arXiv.org Artificial Intelligence
Oct-15-2021
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- Asia > Middle East
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