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Large-Scale Rice Mapping of Thailand using Sentinel-1 Multi-Temporal SAR Data

机译:使用Sentinel-1多时相SAR数据对泰国进行大规模水稻作图

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With synthetic aperture radar (SAR) gradually entering the big data era, large-scale crop mapping research has important scientific significance and application prospects. Thailand is the largest rice exporter of the world, controlling a third of the global market. Therefore, this paper proposed a large-scale rice mapping method for rice monitoring in Thailand. Three simple but effective temporal features were defined based on the phenological information of rice. In order to improve the accuracy of rice mapping, this paper introduced the deep learning semantics segmentation methods, which have already achieved tremendous success in the field of computer vision, into the large-scale rice mapping using the SAR time series. The experimental result showed that the proposed large-scale rice mapping method can achieve a satisfactory result, which achieved 92% overall accuracy.
机译:随着合成孔径雷达(SAR)逐渐进入大数据时代,大规模作物制图研究具有重要的科学意义和应用前景。泰国是世界上最大的大米出口国,控制着全球市场的三分之一。因此,本文提出了一种用于泰国水稻监测的大规模水稻作图方法。根据水稻的物候信息,定义了三个简单但有效的时间特征。为了提高水稻映射的准确性,本文将深度学习语义分割方法引入了利用SAR时间序列的大规模水稻映射中,该方法已经在计算机视觉领域取得了巨大的成功。实验结果表明,提出的大规模水稻作图方法可以达到满意的效果,总体精度达到92%。

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