首页> 外文期刊>Journal of spatial science >Geometric correction and accuracy assessment of Landsat-7 ETM+ andLandsat-5 TM imagery used for vegetation cover monitoring in Queensland,Australia from 1988 to 2007
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Geometric correction and accuracy assessment of Landsat-7 ETM+ andLandsat-5 TM imagery used for vegetation cover monitoring in Queensland,Australia from 1988 to 2007

机译:1988年至2007年用于昆士兰州植被覆盖监测的Landsat-7 ETM +和Landsat-5 TM影像的几何校正和准确性评估

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摘要

A range of programs exist globally that use satellite imagery to derive estimates of vegetation-cover for developing vegetation-management policy, monitoring policy com-pliance and making natural-resource assessments. Consequently, the satellite imagery must have a high degree of geometric accuracy. It is common for the accuracy assessment to be performed using the root mean square error (RMSE) only. However the RMSE is a non-spatial measure and more rigorous accuracy assessment methods are required. Currently there is a lack of spatially explicit accuracy assessment methods reported in the literature that have been demonstrated to work within operational monitoring programs. This paper reports on the method used by the Statewide Landcover and Trees Study (SLATS) to georegister and assess the registration accuracy of Landsat-5 Thematic Mapper (TM) and Landsat-7 Enhanced Thematic Mapper (ETM+) imagery in Queensland, Australia. A geometric baseline with high accuracy (a statewide mean RMSE of 4.53 m) was derived by registering Landsat-7 ETM+ panchromatic imagery acquired in 2002 to a database of over 1600 control points, collected on the ground using a differential global positioning system. Landsat-5 TM and Landsat-7 ETM+ imagery for 12 selected years from 1988 to 2007 was registered to the baseline in an automated procedure that used linear geometric correction models. The reliability of the geometric correction for each image was determined using the RMSE, calculated using independent check points, as an indicator of model fit; by analysing the spatial trends in the model residuals; and through visual assessment of the corrected imagery. The mean RMSE of the statewide coverage of images for all years was less than 12.5 m (0.5 pixels). Less than 1 percent of images had non-linear spatial trends in the model residuals and some image misregistration after applying a linear correction-model; in those cases a quadratic model was deemed necessary for correction. Further research in the development of automated spatially explicit accuracy assessment methods is required.
机译:全球范围内存在一系列计划,这些计划使用卫星图像来得出植被覆盖率的估计值,以制定植被管理政策,监测政策遵守情况并进行自然资源评估。因此,卫星图像必须具有高度的几何精度。通常仅使用均方根误差(RMSE)进行精度评估。但是,RMSE是一种非空间度量,需要更严格的准确性评估方法。当前,文献中缺乏在空间上明确的准确性评估方法,这些方法已被证明可在运营监控程序中使用。本文报告了全州土地覆盖物和树木研究(SLATS)用于地理注册和评估澳大利亚昆士兰州Landsat-5专题测绘仪(TM)和Landsat-7增强专题测绘仪(ETM +)影像的注册精度的方法。通过将2002年获得的Landsat-7 ETM +全色图像注册到使用差分全球定位系统在地面上收集的1600多个控制点的数据库中,可以得出具有高精度的几何基线(全州平均RMSE为4.53 m)。从1988年到2007年的12个选定年份中,Landsat-5 TM和Landsat-7 ETM +图像通过使用线性几何校正模型的自动化程序注册到基线。使用RMSE确定每个图像的几何校正的可靠性,RMSE使用独立的检查点计算,作为模型拟合的指标;通过分析模型残差中的空间趋势;并通过视觉评估校正后的图像。多年来,全州范围内图像的平均RMSE均小于12.5 m(0.5像素)。应用线性校正模型后,不到1%的图像在模型残差中具有非线性空间趋势,并且存在一些图像配准错误;在那些情况下,二次模型被认为是校正所必需的。在自动空间显式准确性评估方法的开发中需要进一步的研究。

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