首页> 外文会议>International Symposium on Remote Sensing of Environment >RICE CROP MONITORING AND YIELD ESTIMATION THROUGH COSMO SKYMED AND TERRASAR-X: A SAR-BASED EXPERIENCE IN INDIA
【24h】

RICE CROP MONITORING AND YIELD ESTIMATION THROUGH COSMO SKYMED AND TERRASAR-X: A SAR-BASED EXPERIENCE IN INDIA

机译:通过COSMO SKYMED和TERRASAR-X进行的稻米作物监测和收成估算:基于SAR的印度经验

获取原文

摘要

Rice is the most important cereal crop governing food security in Asia. Reliable and regular information on the area under rice production is the basis of policy decisions related to imports, exports and prices which directly affect food security. Recent and planned launches of SAR sensors coupled with automated processing can provide sustainable solutions to the challenges on mapping and monitoring rice systems. High resolution (3m) Synthetic Aperture Radar (SAR) imageries were used to map and monitor rice growing areas in selected three sites in TamilNadu, India to determine rice cropping extent, track rice growth and estimate yields. A simple, robust, rule-based classification for mapping rice area with multi-temporal, X-band, HH polarized SAR imagery from COSMO Skymed and TerraSAR X and site specific parameters were used. The robustness of the approach is demonstrated on a very large dataset involving 30 images across 3 footprints obtained during 2013-14. A total of 318 in-season site visits were conducted across 60 monitoring locations for rice classification and 432 field observations were made for accuracy assessment. Rice area and Start of Season (SoS) maps were generated with classification accuracies ranging from 87- 92 per cent. Using ORYZA2000, a weather driven process based crop growth simulation model; yield estimates were made with the inclusion of rice crop parameters derived from the remote sensing products viz., seasonal rice area, SoS and backscatter time series. Yield Simulation accuracy levels of 87 per cent at district level and 85- 96 per cent at block level demonstrated the suitability of remote sensing products for policy decisions ensuring food security and reducing vulnerability of farmers in India.
机译:稻米是控制亚洲粮食安全的最重要的谷物作物。关于稻米生产地区的可靠和定期信息是与直接影响粮食安全的进口,出口和价格有关的政策决定的基础。 SAR传感器的近期和计划中的发布以及自动处理可以为水稻系统的制图和监测挑战提供可持续的解决方案。高分辨率(3m)合成孔径雷达(SAR)图像用于绘制和监视印度泰米尔纳德邦选定三个地点的水稻种植面积,以确定水稻的播种程度,跟踪水稻的生长并估算产量。使用简单,可靠,基于规则的分类方法,使用来自COSMO Skymed和TerraSAR X的多时相,X波段,HH极化SAR图像和特定地点的参数对水稻区域进行制图。该方法的鲁棒性在一个非常大的数据集上得到了证明,该数据集包含2013-14期间在3个足迹中获得的30张图像。在60个监测地点进行了318次季节现场访问,以进行水稻分类,并进行了432次现场观察以进行准确性评估。绘制了稻米面积和季节开始(SoS)图,分类准确率在87%至92%之间。使用ORYZA2000,一个基于天气驱动过程的作物生长模拟模型;估计产量是根据遥感产品得出的稻米作物参数,即季节性稻米面积,SoS和反向散射时间序列得出的。产量模拟的准确度水平在地区级为87%,在区块级为85-96%,这表明遥感产品适用于确保粮食安全和减少印度农民的脆弱性的政策决策。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号