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Crop Rotation Modeling for Deep Learning-Based Parcel Classification from Satellite Time Series

Félix Quinton, Loïc Landrieu

2021Remote Sensing15 citationsDOIOpen Access PDF

Abstract

While annual crop rotations play a crucial role for agricultural optimization, they have been largely ignored for automated crop type mapping. In this paper, we take advantage of the increasing quantity of annotated satellite data to propose to model simultaneously the inter- and intra-annual agricultural dynamics of yearly parcel classification with a deep learning approach. Along with simple training adjustments, our model provides an improvement of over 6.3% mIoU over the current state-of-the-art of crop classification, and a reduction of over 21% of the error rate. Furthermore, we release the first large-scale multi-year agricultural dataset with over 300,000 annotated parcels.

Topics & Concepts

Computer scienceAgricultureSatelliteCrop rotationScale (ratio)Series (stratigraphy)Deep learningCropArtificial intelligenceRemote sensingAgricultural engineeringMachine learningCartographyGeographyForestryGeologyEngineeringPaleontologyArchaeologyAerospace engineeringSmart Agriculture and AIRemote Sensing in AgricultureLand Use and Ecosystem Services
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