首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >RICE (KHARIF) PRODUCTION ESTIMATION USING SAR DATA OF DIFFERENT SATELLITES AND YIELD MODELS: A COMPARATIVE ANALYSIS OF THE ESTIMATES GENERATED UNDER FASAL PROJECT
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RICE (KHARIF) PRODUCTION ESTIMATION USING SAR DATA OF DIFFERENT SATELLITES AND YIELD MODELS: A COMPARATIVE ANALYSIS OF THE ESTIMATES GENERATED UNDER FASAL PROJECT

机译:稻米(Kharif)使用不同卫星的SAR数据的生产估算和产量模型:体例项目中产生的估算比较分析

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Rice is the most important food crop of India. Majority of Rice is sown in kharif season in the country. This is monsoon season for the country where cloud cover poses a major problem for optical remote sensing. Therefore, for these states rice acreage estimation is being done using Synthetic Aperture Radar (SAR) data operationally in India since 1998. A case study is presented in this paper for analysis of past 6 years’ (2012–13 to 2017–18) estimations. Multi temporal Radarsat-2 (HH), RISAT-1 ScanSAR (HH) and Sentinel-1 (VV) data was used in years 2012, 2013–2016, and 2017, respectively for paddy identification. Hierarchal Decision Rule based classification (HDRC) approach was used to identify rice areas under sample segments. Extensive ground truth collected by state remote sensing departments and agriculture departments was utilized in setting the limits of HDRC models and accuracy assessment. Yield was estimated using weather based and remote sensing-based models. Area, production and yield estimates were made and compared with those given by DES. RMSE and R2 were used as statistical measures to assess the accuracy of results. The RMSE % ranged from 2.3 to 4.3; 0.84 to 1.35; 0.24 to 0.27 for area, production and yield respectively. The coefficient of determination (R2) ranged from 0.62 to 0.92; 0.75 to 0.91; 0.5 to 0.83 for area, production and yield respectively. The study showed that use of multi temporal SAR data (both HH and VV) is quite useful for paddy acreage estimation, especially during monsoon.
机译:米是印度最重要的食物作物。大多数米饭在该国的喀里夫赛季中播种。这是云覆盖的国家的季风季节对光学遥感的一个主要问题。因此,对于这些状态,自1998年以来,在印度在印度在印度操作的合成孔径雷达(SAR)数据正在进行水稻面积估计。本文介绍了过去6年(2012-13至2017-18)估计的分析。多时间雷达拉特-2(HH),Risat-1 ScanSAR(HH)和Sentinel-1(VV)数据分别用于稻田识别的几年,2013-2016和2017年使用。基于层次决策规则的分类(HDRC)方法用于识别样品段下的稻米区域。国家遥感部门和农业部门收集的广泛的地面真理在设定HDRC模型的限制和准确性评估中。利用基于天气和基于遥感的模型估计产量。地区,生产和产量估计是由DES给出的制作的。 RMSE和R2被用作统计措施,以评估结果的准确性。 RMSE%从2.3到4.3; 0.84至1.35;面积,生产和收益率分别为0.24至0.27。测定系数(R2)范围为0.62至0.92; 0.75至0.91;面积,生产和屈服0.5至0.83。该研究表明,使用多时间SAR数据(HH和VV)对于稻谷种植面积估计非常有用,尤其是在季风期间。

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