Deep Learning in the Mapping of Agricultural Land Use Using Sentinel-2 Satellite Data

Q3 Social Sciences
Gurwinder Singh, Sartajvir Singh, G. Sethi, V. Sood
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引用次数: 6

Abstract

Continuous observation and management of agriculture are essential to estimate crop yield and crop failure. Remote sensing is cost-effective, as well as being an efficient solution to monitor agriculture on a larger scale. With high-resolution satellite datasets, the monitoring and mapping of agricultural land are easier and more effective. Nowadays, the applicability of deep learning is continuously increasing in numerous scientific domains due to the availability of high-end computing facilities. In this study, deep learning (U-Net) has been implemented in the mapping of different agricultural land use types over a part of Punjab, India, using the Sentinel-2 data. As a comparative analysis, a well-known machine learning random forest (RF) has been tested. To assess the agricultural land, the major winter season crop types, i.e., wheat, berseem, mustard, and other vegetation have been considered. In the experimental outcomes, the U-Net deep learning and RF classifiers achieved 97.8% (kappa value: 0.9691) and 96.2% (Kappa value: 0.9469), respectively. Since little information exists on the vegetation cultivated by smallholders in the region, this study is particularly helpful in the assessment of the mustard (Brassica nigra), and berseem (Trifolium alexandrinum) acreage in the region. Deep learning on remote sensing data allows the object-level detection of the earth’s surface imagery.
基于Sentinel-2卫星数据的农业用地深度学习制图
农业的持续观察和管理对于估计作物产量和作物歉收至关重要。遥感具有成本效益,而且是更大规模监测农业的有效解决方案。有了高分辨率的卫星数据集,农业用地的监测和制图变得更加容易和有效。如今,由于高端计算设备的可用性,深度学习在许多科学领域的适用性不断增加。在这项研究中,深度学习(U-Net)已经在印度旁遮普部分地区的不同农业用地类型的制图中实施,使用了Sentinel-2数据。作为对比分析,对一个著名的机器学习随机森林(RF)进行了测试。对农业用地进行评价时,考虑了主要的冬季作物类型,即小麦、甜菜、芥菜和其他植被。在实验结果中,U-Net深度学习和RF分类器分别达到97.8% (kappa值:0.9691)和96.2% (kappa值:0.9469)。由于该地区小农种植植被的信息很少,因此本研究对该地区芥菜(Brassica nigra)和山三红(Trifolium alexandrinum)种植面积的评估特别有帮助。对遥感数据的深度学习可以实现对地球表面图像的目标级检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Human Geographies
Human Geographies Social Sciences-Geography, Planning and Development
CiteScore
1.10
自引率
0.00%
发文量
7
审稿时长
8 weeks
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