SAR图像的小波收缩与压缩

S. Dachasilaruk
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引用次数: 2

摘要

提出了基于离散小波变换(DWT)的SAR图像的小波压缩方法。将这两个程序集成到一个过程中是非常有效的。首先,采用多级小波分解对SAR斑点图像进行变换。从小波系数中估计噪声的方差,确定阈值,并将其用于所有高频子带的软阈值分割。众所周知的阈值估计包括SimpleShrink、NormalShrink、VisuShrink、SureShrink和BayesShrink。然后利用嵌入式零树小波(EZW)对得到的小波系数进行编码,产生去斑图像的输出比特流。通过评估技术包括S/MSE、MSE和PSNR。最后给出了JERS-1/SAR图像的实验结果。
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Wavelet shrinkage and compression for SAR images
The paper presents the wavelet shrinkage and the image compression for SAR images, based on discrete wavelet transform (DWT). It is very efficient to integrate these two procedures in a single process. First, a speckled SAR image is transformed by using multiple level wavelet decomposition. The variance of noise is estimated from wavelet coefficients to determine the threshold, which is used for soft thresholding in all high frequency subbands. The well-known threshold estimation includes SimpleShrink, NormalShrink, VisuShrink, SureShrink, and BayesShrink. The obtained wavelet coefficients are then encoded by using embedded zero-tree wavelet (EZW) to produce the output bit stream of the despeckled image. By means of an evaluating technique include S/MSE, MSE, and PSNR. Experimental results on JERS-1/SAR images are also given.
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