Modeling of Target Shadows for SAR Image Classification

S. Papson, R. Narayanan
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引用次数: 14

Abstract

A recent thrust of non-cooperative target recognition (NCTR) using synthetic aperture radar (SAR) has been to complement the extraction of scattering centers by incorporating information contained in the target shadow. When classifying targets based on the shadow region alone, it is essential that an image be well clustered into its respective shadow, highlight, and background regions. To obtain the segmentation, the intensity and spatial location of a pixel are modeled as a mixture of Gaussian distributions. Expectation-maximization (EM) is used to obtain the corresponding distributions for the three regions within a given image. Anisotropic smoothing is applied to smooth the input image as well as the posterior probabilities. A representation of the shadow boundary is developed in conjunction with a Hidden Markov Model (HMM) ensemble to obtain target classification. A variety of targets from the MSTAR database are used to test the performance of both the segmentation algorithm and classification structure.
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SAR图像分类中目标阴影建模
利用合成孔径雷达(SAR)进行非合作目标识别(NCTR)的最新研究方向是将目标阴影中的信息与散射中心的提取相结合。当仅基于阴影区域对目标进行分类时,必须将图像很好地聚类到各自的阴影、高光和背景区域。为了获得分割,像素的强度和空间位置被建模为高斯分布的混合。期望最大化(EM)方法用于得到给定图像中三个区域的相应分布。各向异性平滑应用于平滑输入图像以及后验概率。结合隐马尔可夫模型(HMM)集成开发了阴影边界的表示,以获得目标分类。使用MSTAR数据库中的各种目标来测试分割算法和分类结构的性能。
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