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Towards an Operational SAR-Based Rice Monitoring System in Asia: Examples from 13 Demonstration Sites across Asia in the RIICE Project

机译:建立亚洲基于SAR的可操作水稻监测系统:以RIICE项目中亚洲13个示范点为例

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Rice is the most important food security crop in Asia. Information on its seasonal extent forms part of the national accounting of many Asian countries. Synthetic Aperture Radar (SAR) imagery is highly suitable for detecting lowland rice, especially in tropical and subtropical regions, where pervasive cloud cover in the rainy seasons precludes the use of optical imagery. Here, we present a simple, robust, rule-based classification for mapping rice area with regularly acquired, multi-temporal, X-band, HH-polarized SAR imagery and site-specific parameters for classification. The rules for rice detection are based on the well-studied temporal signature of rice from SAR backscatter and its relationship with crop stages. We also present a procedure for estimating the parameters based on “temporal feature descriptors” that concisely characterize the key information in the rice signatures in monitored field locations within each site. We demonstrate the robustness of the approach on a very large dataset. A total of 127 images across 13 footprints in six countries in Asia were obtained between October 2012, and April 2014, covering 4.78 m ha. More than 1900 in-season site visits were conducted across 228 monitoring locations in the footprints for classification purposes, and more than 1300 field observations were made for accuracy assessment. Some 1.6 m ha of rice were mapped with classification accuracies from 85% to 95% based on the parameters that were closely related to the observed temporal feature descriptors derived for each site. The 13 sites capture much of the diversity in water management, crop establishment and maturity in South and Southeast Asia. The study demonstrates the feasibility of rice detection at the national scale using multi-temporal SAR imagery with robust classification methods and parameters that are based on the knowledge of the temporal dynamics of the rice crop. We highlight the need for the development of an open-access library of temporal signatures, further investigation into temporal feature descriptors and better ancillary data to reduce the risk of misclassification with surfaces that have temporal backscatter dynamics similar to those of rice. We conclude with observations on the need to define appropriate SAR acquisition plans to support policies and decisions related to food security.
机译:稻米是亚洲最重要的粮食安全作物。有关季节范围的信息构成许多亚洲国家的国民核算的一部分。合成孔径雷达(SAR)图像非常适合于检测低地水稻,特别是在热带和亚热带地区,因为在雨季普遍存在云层覆盖,因此无法使用光学图像。在这里,我们提出了一种基于规则的简单,鲁棒,基于规则的分类方法,用于绘制具有常规采集的多时间,X波段,HH极化SAR图像和特定地点参数的水稻区域,用于分类。水稻检测规则基于对SAR反向散射的水稻时间特征及其与作物生长阶段的关系的深入研究。我们还提出了一种基于“时间特征描述符”估算参数的过程,该过程简明地描述了每个站点内受监测田地中水稻签名中的关键信息。我们在非常大的数据集上证明了该方法的鲁棒性。从2012年10月到2014年4月,在亚洲6个国家的13个足迹中总共获得了127张图像,覆盖了478万公顷。为了分类目的,在足迹中的228个监视位置进行了1900多个季节现场访问,并进行了1300多个实地观察以进行准确性评估。根据与每个站点派生的观测到的时间特征描述符密切相关的参数,将约1.6 m ha的水稻的分类准确度定位为85%至95%。这13个地点捕获了南亚和东南亚在水资源管理,作物种植和成熟度方面的大部分多样性。这项研究证明了基于多时相SAR图像,基于鲁棒分类方法和参数的多时相SAR图像在全国范围内进行水稻检测的可行性,这些方法和参数基于水稻作物时空动态的知识。我们强调需要开发一个开放的时间特征库,进一步研究时间特征描述符和更好的辅助数据,以减少具有与水稻相似的时间反向散射动态的表面错误分类的风险。在得出结论时,我们认为需要定义适当的搜救计划以支持与粮食安全有关的政策和决策。

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