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Information-theoretic heterogeneity measurement for SAR imagery

机译:SAR图像的信息理论异质性测量

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摘要

A heterogeneity feature, calculable from synthetic aperture radar (SAR) images on a per-pixel basis, but relying on global image statistics, is defined and discussed. Starting from the multiplicative speckle and texture models relating the amount of texture and speckle to the local mean and variance at every pixel, such a feature is rigorously derived from Shannon's information theory as the conditional information of local standard deviation to local mean. Thanks to robust statistical estimation, it is very little sensitive to the noise affecting SAR data, and thus capable of capturing subtle variations of texture whenever they are embedded in a heavy speckle. Experimental results carried out on two SAR images with different degrees of noisiness demonstrate that the proposed feature is likely to be useful for a variety of automated segmentation and classification tasks.
机译:定义和讨论了一种异质性特征,该特征可从合成孔径雷达(SAR)图像按像素计算,但依赖于全局图像统计信息。从将纹理和斑点的数量与每个像素的局部均值和方差相关的乘法斑点和纹理模型开始,这种特征是从Shannon信息理论严格得出的,作为局部标准差与局部均值的条件信息。由于可靠的统计估计,它对影响SAR数据的噪声几乎不敏感,因此,每当嵌入到严重斑点中时,就能够捕获纹理的细微变化。在具有不同噪声程度的两个SAR图像上进行的实验结果表明,所提出的功能可能对各种自动分割和分类任务很有用。

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