基于多尺度曲线变换的遥感合成孔径雷达图像去斑算法

M. Kooshesh, G. Akbarizadeh
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引用次数: 2

摘要

对SAR图像进行去斑处理是SAR图像分割和目标识别的关键。当对SAR图像进行去斑处理时,图像的边缘、角落、纹理、物体部位等重要信息会被去斑处理。曲波变换是最近提出的一种多尺度分析形式,它在边缘和曲线检测方面比小波变换和Gabor变换具有更好的性能。这是一个对SAR图像处理有用的几何变换。对于无监督的纹理图像,分割与纹理是不同的,不同的,因此纹理在边界处的噪声会消失。曲波变换在曲线边缘检测中取得了较好的效果,其定位精度高于小波变换。本研究采用基于变换的快速离散曲线变换(FDCT)和无监督自适应阈值学习,提出了一种新的SAR图像去斑算法。在该算法中,可以学习SAR图像的每个片段并选择其自适应阈值。仿真结果表明,该算法的性能优于同类算法。
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Despeckling algorithm for remote sensing synthetic aperture radar images using multi-scale curvelet transform
The goal of the present research is to despeckle SAR images, which is critical for segmentation and target recognition in satellite SAR images. When a despeckling algorithm is applied to a SAR image, important information such as the edges, corners, textures, and object parts will degrade. Curvelet transform is a recently proposed form of multi-scale analysis that achieves better performance of wavelet and Gabor transforms in edge and curve detection. This is a geometric transform that is useful for SAR image processing. For unsupervised texture images, segmentation is different and distinct from the textures, so the textures at the boundary noises will disappear. Curvelet transform has produced good results in the detection of curved edges with higher accuracy in finding the orientation than wavelet transforms. The present study uses fast discrete curvelet transform (FDCT) based on wresting and uses unsupervised adaptive threshold learning to develop a new despeckling algorithm for SAR images. In the proposed algorithm, each segment of the SAR image can be learned for selection of its adaptive threshold. Simulation results demonstrate that the proposed algorithm performs better than similar methods.
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