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首页> 外文期刊>International journal of applied earth observation and geoinformation >Assessing the accuracy of hyperspectral and multispectral satellite imagery for categorical and quantitative mapping of salinity stress in sugarcane fields
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Assessing the accuracy of hyperspectral and multispectral satellite imagery for categorical and quantitative mapping of salinity stress in sugarcane fields

机译:评估高光谱和多光谱卫星图像在甘蔗田盐分分类和定量制图中的准确性

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This study evaluates the feasibility of hyperspectral and multispectral satellite imagery for categorical and quantitative mapping of salinity stress in sugarcane fields located in the southwest of Iran. For this purpose a Hyperion image acquired on September 2, 2010 and a Landsat7 ETM+ image acquired on September 7, 2010 were used as hyperspectral and multispectral satellite imagery. Field data including soil salinity in the sugarcane root zone was collected at 191 locations in 25 fields during September 2010. In the first section of the paper, based on the yield potential of sugarcane as influenced by different soil salinity levels provided by FAO, soil salinity was classified into three classes, low salinity (1.7-3.4 dS/m), moderate salinity (3.5-5.9 dS/m) and high salinity (6-9.5) by applying different classification methods including Support Vector Machine (SVM), Spectral Angle Mapper (SAM), Minimum Distance (MD) and Maximum Likelihood (ML) on Hyperion and Landsat images. In the second part of the paper the performance of nine vegetation indices (eight indices from literature and a new developed index in this study) extracted from Hyperion and Landsat data was evaluated for quantitative mapping of salinity stress. The experimental results indicated that for categorical classification of salinity stress, Landsat data resulted in a higher overall accuracy (OA) and Kappa coefficient (KC) than Hyperion, of which the MD classifier using all bands or PCA (1-5) as an input performed best with an overall accuracy and kappa coefficient of 84.84% and 0.77 respectively. Vice versa for the quantitative estimation of salinity stress, Hyperion outperformed Landsat. In this case, the salinity and water stress index (SWSI) has the best prediction of salinity stress with an R-2 of 0.68 and RMSE of 1.15 dS/m for Hyperion followed by Landsat data with an R-2 and RMSE of 0.56 and 1.75 dS/m respectively. It was concluded that categorical mapping of salinity stress is the best option for monitoring agricultural fields and for this purpose Landsat data are most suitable. (C) 2016 Elsevier B.V. All rights reserved.
机译:这项研究评估了高光谱和多光谱卫星图像对位于伊朗西南部甘蔗田中盐分应力进行分类和定量制图的可行性。为此,将2010年9月2日获得的Hyperion图像和2010年9月7日获得的Landsat7 ETM +图像用作高光谱和多光谱卫星图像。 2010年9月,在25个田地的191个地点收集了包括甘蔗根区土壤盐分在内的田间数据。在本文的第一部分中,根据受粮农组织提供的不同土壤盐分水平影响的甘蔗单产潜力,土壤盐分通过使用支持向量机(SVM),光谱角度等不同的分类方法将盐度分为低盐度(1.7-3.4 dS / m),中盐度(3.5-5.9 dS / m)和高盐度(6-9.5)三类。 Hyperion和Landsat影像上的Mapper(SAM),最小距离(MD)和最大可能性(ML)。在论文的第二部分中,对从Hyperion和Landsat数据中提取的9种植被指数(文献中的8种指数和本研究中的新开发指数)的性能进行了评估,以进行盐度应力的定量绘制。实验结果表明,对于盐度应力的分类,Landsat数据比Hyperion具有更高的总体精度(OA)和Kappa系数(KC),其中MD分类器使用所有波段或PCA(1-5)作为输入整体准确度和卡帕系数分别为84.84%和0.77,表现最佳。反之亦然,Hyperion在盐度应力的定量估算方面优于Landsat。在这种情况下,盐度和水分胁迫指数(SWSI)对盐分的预测最好,对于Hyperion,R-2的R-2为0.68,RMSE为1.15 dS / m,其次是Landsat数据,R-2和RMSE为0.56,分别为1.75 dS / m。结论是,对盐分胁迫进行分类制图是监测农田的最佳选择,为此,Landsat数据最合适。 (C)2016 Elsevier B.V.保留所有权利。

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