基于小波的SAR图像分类

S. Barbarossa, L. Parodi
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引用次数: 6

摘要

本文的目的是提出一种基于小波变换(WT)获得的图像的多分辨率表示的合成孔径雷达(SAR)图像分类方法。小波变换为分析不同尺度、不同空间频带和方向的图像提供了一种高效、无冗余的工具。不同尺度和方向的能量含量分析可以用来区分结构变异性较强的地区,如城市地区和结构较少的地区,如耕地。通过小波域的非相干平滑来减轻散斑的影响。小波也被用作分割工具。在真实的SAR图像和模拟图像上对该方法进行了测试,以量化正确分类的百分比。
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SAR Image Classification by Wavelets
The aim of this work is to propose a method for classifying Synthetic Aperture Radar (SAR) images based on a multiresolution representation of the images obtained by Wavelet Transform (WT). The WT offers an efficient and nonredundant tool f o r analyzing the image at different scales and, equivalently, at different spatial frequency bands and orientations. The analysis of the energy content at different scales and orientations can be exploited to discriminate areas with stronger texture variability, such as urban areas, from less structured regions, such as cultivated areas. The effect of the speckle is mitigated by a noncoherent smoothing in the the wavelet domain. The wavelet is also used as a segmentation tool. The proposed approach is tested on real SAR images as well as on simulated images to quantify the percentage of correct classification.
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