基于Contourlet域粗糙集理论的SAR图像去噪

Xiao-lei Wei, Yong-an Zheng, Z. Cui, Quan-li Wang
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引用次数: 2

摘要

提出了一种基于粗糙集理论的contourlet域散斑消减方法。利用均匀分布在窗口中心周围的旋转邻域模板,提出了改进的上近似集来检验窗口中心的良好延续性。首先采用对数变换将散斑变换为加性噪声,然后采用contourlet变换将对数变换后的图像分解为低频样本和定向带通样本。采用窗口中心与窗口模板像素之间的非统计方差作为各尺度带通样本延续性良好的度量。找到这个方差的最小值得到最均匀的模板,然后用这个最均匀模板的平均值来代替中心系数。最后通过反轮廓波变换重构去噪图像,实验结果表明该方法对SAR图像去噪是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SAR Images Denoising Based on Rough Set Theory in Contourlet Domain
The paper present a speckle reduction method based on rough set theory in contourlet domain. The modified upper approximation set is proposed to check good continuation of the window center with a rotating neighborhood templates distributed uniformly around the center. Firstly a logarithmically transform is applied for converting the speckles to additive noises, then the contourlet transform is employed for decomposing the logarithmically transformed image into low frequency samples and directional bandpass samples. A non-statistical variance between the center of a window and pixels of window template is used as the measure of good continuation for bandpass samples in each scale. The minimum vale of this variance is found to get the most homogeneous template and the mean of this most homogeneous template is then used to take place the center coefficient. Finally the de-noised image is reconstructed by the inverse contourlet transform and the experiment result shows this method is effectively for SAR images de-noising.
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