Step-by-Step Processing of Sentinel-1 data for Estimation of Rice Area.

Awais Karamat, M. Nawaz
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引用次数: 2

Abstract

Rice has become an essential part of four pillars of food security, especially in Asia, where it is produced over large spatial extents and also consumed widely. About 89 % of the global rice production is targeted and achieved from Asian countries. We downloaded Sentinel-1 datasets from official website of European Space Agency (ESA) for identification of rice patterns in the study site. The data was selected in Ground Range Detection (GRD) format and applied the toolbox in Sentinel Application Platform (SNAP) for further processing. We applied the orbit file for geometric and radiometric corrections, LEE filter for removal of spackles, resampling to convert 20*20m2 to 10*10m2 pixel size and finally the Random Forest Classification (RFC) to classify the satellite image. The classification results of Sentinel image for the year 2018, show that the total area of the study site was 360021 ha, including 144991 ha as rice area, 130598 as other vegetation, 19339 ha as water body and the built-up area was estimated as 5693 ha. Kappa statistics resulted the overall accuracy of 85% which is in strong agreement to ground reality. We observed that the rice area was increased from 140403 ha in 2017 to 144991 ha in 2018. The main reason of this increase in rice area was observed as the preference of local farmers to grow rice in comparison to other crops because the local government was offering high subsidy to rice farmers. Moreover, district Nankana-Sahib produces rice of expert quality which is famous throughout the world therefore, it is considered as cash crop.
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基于Sentinel-1数据的水稻面积估算分步处理。
大米已成为粮食安全四大支柱的重要组成部分,特别是在亚洲,大米的生产空间很大,消费也很广泛。全球约89%的稻米产量是由亚洲国家确定并实现的。我们从欧洲航天局(ESA)的官方网站下载了Sentinel-1数据集,用于研究地点的水稻模式识别。选取Ground Range Detection (GRD)格式数据,应用Sentinel Application Platform (SNAP)工具箱进行进一步处理。我们使用轨道文件进行几何和辐射校正,LEE滤波器去除斑点,重新采样将20*20m2像素大小转换为10*10m2像素大小,最后使用随机森林分类(RFC)对卫星图像进行分类。2018年Sentinel影像分类结果显示,研究点总面积为360021 ha,其中水稻面积144991 ha,其他植被面积130598 ha,水体面积19339 ha,建成区面积5693 ha。Kappa统计结果的总体准确率为85%,这与实际情况非常吻合。我们观察到,水稻面积从2017年的140403 ha增加到2018年的144991 ha。据分析,水稻种植面积增加的主要原因是,由于地方政府向种植水稻的农民提供高额补贴,当地农民比其他作物更喜欢种植水稻。此外,Nankana-Sahib地区生产的优质大米在世界各地都很有名,因此被视为经济作物。
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