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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Landsat-7 ETM+ radiometric normalization comparison for northern mapping applications
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Landsat-7 ETM+ radiometric normalization comparison for northern mapping applications

机译:适用于北方制图应用程序的Landsat-7 ETM +辐射归一化比较

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Relative radiometric normalization has long been performed to generate consistency among individual Landsat scenes for production of composites containing multiple scenes. Normalization methods have relied on matching identical and assumed invariant features in both images of an overlapping pair, or on invariant targets that are not necessarily the same features. Problems with overlap normalization methods include sensitivity to outliers in overlap data caused by atmospheric or land cover change between scenes, which can lead to radiometric error propagation across a mosaic caused by a normalized scene becoming a reference for the subsequent scene entered into the mosaic. Solutions to such problems include interactive Outlier removal to generate a non-nalization function using a ' no change ' data set and methods that are robust against outliers to automatically generate normalization functions with minimal user input. This paper compares two normalization methods that use a robust regression technique called Theil-Sen with an established overlap normalization method. The first method uses Theil-Sen regression to generate a nonnalization function between overlap regions, while the second uses Theil-Sen to normalize to coarse-resolution composite reflectance data from the SPOT VEGETATION (VGT) sensor. The results of the normalizations were evaluated in two ways: (1) using statistics generated between overlap regions; and (2) separately using coarse-resolution data as a reference. Both overlap normalization methods performed almost identically; however, Theil-Sen was faster and easier to implement than its traditional counterpart due to its insensitivity to outliers and capability for full automation. While overlap and coarse-resolution normalizations each outperformed the other when evaluated against its calibration set, error propagation caused by outliers in overlap samples was avoided in the normalization to coarse-resolution imagery. Advantages offered by normalization to coarse-resolution data using robust regression, including full automation, make this method particularly attractive for generation of large area mosaics containing 100 Landsat scenes or more. (c) 2005 Elsevier Inc. All rights reserved.
机译:长期以来,已经进行了相对辐射归一化,以在各个Landsat场景之间产生一致性,以生产包含多个场景的合成物。归一化方法依赖于在重叠对的两个图像中匹配相同且假定的不变特征,或者依赖于不一定是相同特征的不变目标。重叠归一化方法的问题包括由场景之间的大气或土地覆盖变化引起的重叠数据中离群值的敏感性,这可能导致归一化场景成为进入马赛克的后续场景的参考而导致跨镶嵌图的辐射误差传播。解决此类问题的方法包括:使用“无变化”数据集进行交互式离群值消除,以生成非归一化函数;以及针对离群值的鲁棒性,以最少的用户输入自动生成归一化函数的方法。本文比较了使用归一化方法(称为Theil-Sen)和鲁棒回归技术的两种归一化方法。第一种方法使用Theil-Sen回归在重叠区域之间生成非归一化函数,第二种方法使用Theil-Sen归一化为来自SPOT VEGETATION(VGT)传感器的粗分辨率复合反射率数据。通过两种方式评估归一化的结果:(1)使用重叠区域之间生成的统计数据; (2)分别使用粗分辨率数据作为参考。两种重叠归一化方法的执行几乎相同;但是,由于Theil-Sen对异常值不敏感并且具有完全自动化的能力,因此比传统的方式更快,更容易实现。尽管在针对其校准集进行评估时,重叠和粗分辨率归一化的性能均优于另一种,但在对粗分辨率图像进行归一化时,避免了重叠样本中异常值引起的误差传播。使用鲁棒回归(包括全自动)对粗分辨率数据进行归一化提供的优势使该方法对于生成包含100个或更多Landsat场景的大面积马赛克特别有吸引力。 (c)2005 Elsevier Inc.保留所有权利。

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