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Empirical radiometric correction of optical remote sensing imagery

机译:光学遥感影像的经验辐射校正

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摘要

We propose an empirical radiometric correction method for the effects, such as atmospheric effects and anisotropic reflection of the surface, in optical remote sensing data. These distortions are sensor viewing (scanning) angle dependent, thus they can be significant for data received from airborne sensors due to their wide field of view. The procedure is based solely on the digital image data and consists of several steps. First, the initial image region near nadir (minimal distortions) is clustered by an extended k-means algorithm, which automatically detects the clusters (surface types) in an image. Then, for each cluster an average line profile is calculated. These profiles (initially defined in a middle part of an image line) are extrapolated to the whole line of an image by a polynomial approximation. Finally, from these polynomial functions the linear regression over all clusters is build using the radiative transfer equation, which allows the radiometric correction for each viewing angle in an image relative to the reference angle, usually nadir. The procedure is iterative, that is the correction is first performed for a narrow part around the initial region. Then the procedure is initialized with this newly corrected image region and repeated until the whole image is corrected. The experiments for data acquired by airborne multispectral scanner DAEDALUS AADS 1268 ATM show the effectiveness of the proposed method especially for the mosaicking and classification applications.
机译:针对光学遥感数据中的大气效应和表面的各向异性反射等影响,我们提出了一种经验辐射校正方法。这些畸变取决于传感器的观察(扫描)角度,因此,由于它们的视场较宽,因此对于从机载传感器接收的数据可能非常重要。该过程仅基于数字图像数据,并包含几个步骤。首先,通过扩展的k均值算法对最低点附近的初始图像区域(最小失真)进行聚类,该算法会自动检测图像中的聚类(表面类型)。然后,对于每个群集,计算平均线轮廓。通过多项式逼近将这些轮廓(最初定义在图像线的中间部分)外推到图像的整个线。最后,根据这些多项式函数,使用辐射传递方程建立所有群集的线性回归,从而可以相对于参考角(通常为最低点)对图像中的每个视角进行辐射校正。该过程是迭代的,即首先对初始区域周围的狭窄部分执行校正。然后,使用该新校正的图像区域初始化该过程,并重复该过程,直到校正整个图像为止。机载多光谱扫描仪DAEDALUS AADS 1268 ATM对数据进行的实验表明,该方法的有效性,特别是在镶嵌和分类应用中。

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