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National-scale greenhouse mapping for high spatial resolution remote sensing imagery using a dense object dual-task deep learning framework: A case study of China

机译:使用密集物体双任务深度学习框架的高空间分辨率遥感图像的全国规模温室映射 - 以中国为例

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摘要

Greenhouses have revolutionized farming all over the world. To estimate vegetable yields, greenhouse mapping using high spatial resolution (HSR) remote sensing imagery is very important. Although automatic greenhouse mapping methods have been proposed, they are often applied in limited small-scale areas (i.e. a parcel, a city, or a province). Large-scale greenhouse mapping (i.e. national-scale) faces the diversity of greenhouses in different areas, the difficulty of the simultaneous extraction of the number and area of greenhouses, and the dense spatial distribution of greenhouses. In this paper, to solve the problem of large-scale greenhouse mapping, a novel data-driven deep learning framework is proposed, which we refer to as the dense object dual-task deep learning (DELTA) framework. The dual-task learning module simultaneously extracts the number and area of greenhouses by adopting a greenhouse area extraction branch and a greenhouse number extraction branch. A high-density-biased sampler module is proposed to select more samples in areas with a dense distribution, so that the trained model is more effective at dense greenhouse extraction. Six regions in China were selected for evaluation, which obtained a performance increment of 1.8% in mean average precision (mAP) when compared with Faster R-CNN. Finally, the whole of China was taken as the research area, and remote sensing image tiles at a 1-m spatial resolution from all over China were obtained. All the images were captured by different sensors and downloaded from open-source sites or purchased. The experimental results indicate that more than 13 million greenhouses were extracted in China.
机译:温室彻底改变了世界各地的农业。为了估计蔬菜产量,使用高空间分辨率(HSR)遥感图像的温室映射非常重要。尽管已经提出了自动温室映射方法,但它们通常在有限的小规模区域(即包裹,城市或省)中应用。大型温室测绘(即民族规模)面临着不同领域的温室的多样性,同时提取温室的数量和面积的难度,以及温室的密集空间分布。在本文中,为了解决大规模的温室映射问题,提出了一种新的数据驱动的深度学习框架,我们将其称为密集的对象双任务深度学习(Delta)框架。双任务学习模块通过采用温室区域提取分支和温室数量提取分支,同时提取温室的数量和面积。提出了一种高密度偏置的采样器模块,以在具有密集分布的区域中选择更多样品,因此培训的模型在致密温室提取方面更有效。选择六个地区进行评估,该评价,在与更快的R-CNN相比时,在平均平均精度(地图)中获得了1.8%的性能增量。最后,整个中国被视为研究领域,获得了从中国各地的1米空间分辨率的遥感图像瓷砖。所有图像都被不同的传感器捕获并从开源站点下载或购买。实验结果表明,在中国提取了超过1300万温室。

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