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首页> 外文期刊>Remote Sensing >Reconstructing Historical Land Cover Type and Complexity by Synergistic Use of Landsat Multispectral Scanner and CORONA
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Reconstructing Historical Land Cover Type and Complexity by Synergistic Use of Landsat Multispectral Scanner and CORONA

机译:通过结合使用Landsat多光谱扫描仪和CORONA重建历史土地覆盖类型和复杂性

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Survey data describing land cover information such as type and diversity over several decades are scarce. Therefore, our capacity to reconstruct historical land cover using field data and archived remotely sensed data over large areas and long periods of time is somewhat limited. This study explores the relationship between CORONA texture—a surrogate for actual land cover type and complexity—with spectral vegetation indices and texture variables derived from Landsat MSS under the Spectral Variation Hypothesis (SVH) such as to reconstruct historical continuous land cover type and complexity. Image texture of CORONA was calculated using a mean occurrence measure while image textures of Landsat MSS were calculated by occurrence and co-occurrence measures. The relationship between these variables was evaluated using correlation and regression techniques. The reconstruction procedure was undertaken through regression kriging. The results showed that, as expected, texture based on the visible bands and corresponding indices indicated larger correlation with CORONA texture, a surrogate of land cover (correlation >0.65). In terms of prediction, the combination of the first-order mean of band green, second-order measure of tasseled cap brightness, second-order mean of Normalized Visible Index (NVI) and second-order entropy of NIR yielded the best model with respect to Akaike’s Information Criterion (AIC), r-square, and variance inflation factors (VIF). The regression model was then used in regression kriging to map historical continuous land cover. The resultant maps indicated the type and degree of complexity in land cover. Moreover, the proposed methodology minimized the impacts of topographic shadow in the region. The performance of this approach was compared with two conventional classification methods: hard classifiers and continuous classifiers. In contrast to conventional techniques, the technique could clearly quantify land cover complexity and type. Future applications of CORONA datasets such as this one could include: improved quality of CORONA imagery, studies of the CORONA texture measures for extracting ecological parameters (e.g., species distributions), change detection and super resolution mapping using CORONA and Landsat MSS.
机译:缺乏描述几十年来土地覆盖信息(例如类型和多样性)的调查数据。因此,我们在大面积和长时间内使用现场数据和遥感数据重建历史土地覆盖的能力受到一定限制。这项研究探索了CORONA纹理(一种实际的土地覆盖类型和复杂性的替代物)与光谱植被假说(SVH)下由Landsat MSS得出的光谱植被指数和纹理变量之间的关系,以重建历史连续的土地覆盖类型和复杂性。 CORONA的图像纹理是使用平均发生度量来计算的,而Landsat MSS的图像纹理是通过发生和共现度量来计算的。使用相关和回归技术评估这些变量之间的关系。重建程序通过回归克里金法进行。结果表明,按预期,基于可见带和相应指标的纹理表明与CORONA纹理(土地覆盖的替代物)具有更大的相关性(相关性> 0.65)。在预测方面,带绿色的一阶均值,流苏帽亮度的二阶量度,归一化可见指数(NVI)的二阶均值和NIR的二阶熵相结合产生了最佳模型遵循Akaike的信息标准(AIC),r平方和方差膨胀因子(VIF)。然后,将回归模型用于回归克里金法以绘制历史连续土地覆盖图。生成的地图显示了土地覆被的类型和复杂程度。而且,所提出的方法使该区域的地形阴影的影响最小化。将该方法的性能与两种常规分类方法进行了比较:硬分类器和连续分类器。与传统技术相比,该技术可以清楚地量化土地覆被的复杂性和类型。这样的CORONA数据集的未来应用可能包括:提高CORONA图像的质量,研究CORONA纹理度量以提取生态参数(例如物种分布),使用CORONA和Landsat MSS进行变化检测和超分辨率映射。

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