Unsupervised segmentation of radar images using wavelet decomposition and cumulants

J. Boucher, Stephane Pleihers
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引用次数: 2

Abstract

Intensity radar images are difficult to classify because of the speckle phenomenon, which acts like a multiplicative noise and which is characterized by a Gamma distribution law. Unsupervised Bayesian segmentation applied to the whole radar image gives only good results in terms of classification rate when the look number is sufficiently high to approximate the Gamma law by a Gaussian law [1]. Multiresolution image analysis by wavelets has proved to be efficient for increasing classification performances in this Gaussian case [2,3], and also for optical images [4]. In this paper, it is proposed to extend the method to nongaussian images,by using cumulants to approximate the conditional distribution used in the classification algorithm at each level of the pyramid and to apply the procedure to simulated radar images with a low look number.<>
基于小波分解和累积量的雷达图像无监督分割
强度雷达图像由于散斑现象而难以分类,散斑现象类似于乘性噪声,其特征为伽玛分布规律。将无监督贝叶斯分割应用于整个雷达图像,只有当外观数足够高,可以用高斯定律近似伽马定律时,分类率才会有很好的效果[1]。使用小波进行多分辨率图像分析已被证明可以有效地提高高斯情况下的分类性能[2,3],对于光学图像也是如此[4]。本文提出将该方法扩展到非高斯图像,通过使用累积量在金字塔的每一层近似分类算法中使用的条件分布,并将该方法应用于具有低看起来数的模拟雷达图像。
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