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 the first deep learning approach modeling simultaneously the inter- and intra-annual agricultural dynamics of parcel classification. Along with simple training adjustments, our model provides an improvement of over 6.6 mIoU points over the current state-of-the-art of crop classification. Furthermore, we release the first large-scale multi-year agricultural dataset with over 300,000 annotated parcels.
翻译:虽然年度作物轮作在农业优化方面起着关键作用,但在自动化作物类型绘图方面基本上被忽略了,在本文件中,我们利用数量不断增加的附加说明的卫星数据,提出了第一个深层次的学习方法,同时模拟包裹分类的年间和年内农业动态。除了简单的培训调整外,我们的模型比目前作物分类的最新水平提高了6.6 mIoU点。此外,我们发布了第一个大规模多年农业数据集,有30多万个附加说明的包裹。