首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >DISCRIMINATION OF SUGARCANE CROP AND CANE YIELD ESTIMATION USING LANDSAT AND IRS RESOURCESAT SATELLITE DATA
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DISCRIMINATION OF SUGARCANE CROP AND CANE YIELD ESTIMATION USING LANDSAT AND IRS RESOURCESAT SATELLITE DATA

机译:使用Landsat和IRS资源卫星数据鉴别甘蔗作物和甘蔗产量估计

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The objective of this research work aims at crop acreage estimation at mill catchment level, derivation of sugarcane phenology and yield estimation at field level. The study was carried out in Kisan Sahkari Chini Mill catchment, Nanauta, Saharanpur, Uttar Pradesh. Extensive and systematic field sampling was carried out for ground-truth observations, biophysical measurements (LAI and above/below canopy PAR) and mill-able cane yield through crop cutting experiments. Major emphasis were laid on sugarcane crop discrimination, biophysical parameter estimation, generation of phenological metrics and yield model development for sugarcane crop at mill catchment level. Sugarcane crop discrimination and its acreage estimation was done using multi-sensor satellite data. The sugarcane classification accuracies were  92% for LISS-IV,  86% for Landsat-8 and  83% for LISS-III classified image. The sugarcane phenological matrices at field level derived using time-series of NDVI for a period of 2015–2016 through TIMESAT software. To retrieve the biophysical parameters particularly leaf area index, best predictive function developed with vegetation indices (EVI, NDVI, SAVI) through correlation and regression analysis along this cane yield estimation attempted with multi-date (eight-day) NDVI from Landsat OLI. Yield models developed for ratoon cane and planted cane explained variance in yield significantly with coefficient of determination (R2) values equal to 0.83 and 0.69, respectively. Similar predictive functions were also established with monthly composite dataset for village-level yield estimates with step wise regression (R2 = 0.83) (P = 0.00001), Multi linear regression (MLR) (R2 = 0.792) (P = 0.00081) and Random forest regression (R2 = 0.466) (P = 0.038).
机译:本研究工作的目的是在轧机集水区水平,甘蔗素衍生物的作物种植面积估计,在现场水平的产量估计。该研究是在Kisan Sahkari Chini Mill集水区进行,纳纳鲁塔,撒哈拉普尔,北方邦。通过作物切割实验进行广泛和系统的田间采样,进行地面真实观察,生物物理测量(赖和高于/下调/下调/下调/下调)和罐的甘蔗产量。在粉碎机水平下奠定了甘蔗作物歧视,生物物理参数估计,生物物理参数估计,甘蔗作物的产生模型开发的生物理学指标。使用多传感器卫星数据进行甘蔗作物歧视及其面积估计。 LiSS-IV的甘蔗分类精度> 92%,Lissat-8和Liss-III分类图像的86%> 83%。通过TimeAT软件使用时间系列NDVI的现场水平的甘蔗鉴矩阵。为了检索生物物理参数,特别是叶面积指数,通过沿着Landsat Oli的多日(8天)NDVI尝试的这种甘蔗产量估计来通过相关性和回归分析来利用植被指数(EVI,NDVI,SAVI)开发的最佳预测函数。为速率开发的产量模型和种植的蔗可比于屈服的差异显着,分别具有等于0.83和0.69的测定系数(R2)值。也与村级级产量估计的月度复合数据集进行了类似的预测功能,步骤明智的回归(R2 = 0.83)(P = 0.00001),多线性回归(MLR)(R2 = 0.792)(P = 0.00081)和随机森林回归(R2 = 0.466)(p = 0.038)。

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