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Spectral-consistent relative radiometric normalization for multitemporal Landsat 8 imagery

机译:多时相Landsat 8影像的光谱一致性相对辐射归一化

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摘要

Radiometric normalization is a fundamental and important preprocessing method for remote sensing applications using multitemporal satellite images due to uncertainties of at-sensor radiances caused by different sun angles and atmospheric conditions. In case the atmospheric model and ground measurements are unavailable during data acquisitions, relative normalization is an alternative method which minimizes the radiometric differences among images without the requirement of additional information. The keys to a successful relative normalization are the selection of pseudo invariant features (PIFs) from bitemporal images and the regression of selected PIFs for transformation coefficient determination. Previous studies on transformation coefficient determination adopted band-by-band regression. These studies have obtained satisfactory normalization results; however, they have not fully considered the spectral inconsistency problem caused by individual band regression. To alleviate this problem, this study proposed a constrained orthogonal regression, which enforces pixel spectral signatures to be as consistent as possible during radiometric normalization while band regression quality is preserved. In addition, instead of selecting one of the input images as reference for radiometric transformation, a common radiometric level located between bitemporal images is selected as the reference to further reduce possible spectral inconsistency. Qualitative and quantitative analyses of several bitemporal images acquired by the Landsat 8 sensor were conducted to evaluate the proposed method with the measurements of spectral distance and similarity. The experimental results demonstrate the superiority of the proposed method to related regression and radiometric normalization methods, in terms of spectral signature consistency.
机译:由于不同的太阳角度和大气条件导致的传感器辐射的不确定性,辐射归一化是使用多时相卫星图像进行遥感应用的基本且重要的预处理方法。如果在数据采集过程中无法获得大气模型和地面测量值,则可以使用相对归一化方法,该方法可以在不需要其他信息的情况下最小化图像之间的辐射度差异。成功进行相对归一化的关键是从位时图像中选择伪不变特征(PIF),以及对选定的PIF进行回归以确定变换系数。先前关于变换系数确定的研究采用逐带回归。这些研究已获得令人满意的标准化结果。但是,他们还没有完全考虑到由单个频带回归引起的光谱不一致问题。为缓解此问题,本研究提出了一种约束正交回归,该方法在保留辐射带归一化质量的同时,在辐射归一化过程中将像素光谱特征强制为尽可能一致。另外,代替选择输入图像之一作为放射线转换的参考,选择位于比特时间图像之间的公共放射线水平作为参考,以进一步减少可能的光谱不一致。通过对Landsat 8传感器获取的几个时空图像进行定性和定量分析,以评估所提出的方法的光谱距离和相似性。实验结果证明了该方法相对于相关回归和辐射归一化方法在光谱特征一致性方面的优越性。

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