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Unsupervised assessment and pyramidal filtering of colored speckle

机译:彩色斑点的无监督评估和金字塔过滤

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Abstract: An unsupervised method is first proposed to assess the variance and the spatial correlation coefficients of speckle noise in SAR images. They are obtained as regression coefficients, the former of local standard deviation to local mean, the latter of local unity-lag covariance to local variance, both calculated on homogeneous areas. For this purpose, an automatic procedure has been developed, based on that homogeneous areas produce clusters of scatterpoints that are aligned using the regression line. On true SAR images, the method is capable to carefully reject textured regions, in which speckle may be not fully developed and the variance of the signal is not negligible. On simulated speckled images, an impressive accuracy is obtained. Once the noise parameters are known, adaptive filtering is applied in a multiresolution fashion, to take advantage of increasing SNR of the noisy image at increasing scales, as well as to cope with the spatial correlation of the noise that is halved together with the resolution. Laplacian pyramids are generalized to the noise model by defining ratios of combinations of lowpass image versions, in which the dependence of the noise on the signal is largely removed, together with the nonstationarity of the mean. Experiments on both real and synthetic images demonstrate a high accuracy of results, both for noise estimation and for filtering.!16
机译:摘要:首先提出了一种无监督的方法来评估SAR图像中斑点噪声的方差和空间相关系数。它们是作为回归系数获得的,前者是局部标准偏差到局部均值,后者是局部单位滞后协方差到局部方差,均在均质区域上计算。为此,已经开发了一种自动程序,其依据是均匀区域会产生散射点簇,这些散射点将使用回归线进行对齐。在真实的SAR图像上,该方法能够小心地拒绝纹理区域,在该纹理区域中,斑点可能没有完全形成,信号的方差也可以忽略不计。在模拟的斑点图像上,获得了令人印象深刻的准确性。一旦知道了噪声参数,便会以多分辨率的方式应用自适应滤波,以利用以增大的比例提高带噪图像的SNR的优势,并应对与分辨率一分为二的噪声的空间相关性。通过定义低通图像版本的组合比率,将拉普拉斯金字塔推广到噪声模型,在该模型中,噪声对信号的依赖性在很大程度上消除了噪声,并且均值不平稳。在真实和合成图像上进行的实验均表明,该结果在噪声估计和滤波方面均具有很高的准确性。!16

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