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Three-dimensional feature models for synthetic aperture radar and experiments in feature extraction.

机译:合成孔径雷达的三维特征模型和特征提取实验。

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摘要

This dissertation presents a new set of three-dimensional scattering feature models for synthetic aperture radar (SAR). We develop a set of parametric models of canonical shapes that capture aspect-dependent, high-frequency scattering for bistatic (and monostatic) 3D SAR phase history responses. The models are parameterized by the shape location, orientation, and size as well as the radar transmitter and receiver antenna aspects and frequency. We develop the models by combining physical optics (PO) and uniform theory of diffraction (UTD) planar scattering solutions to approximate 3D scattering responses of canonical shapes. We validate the models using scattering prediction software and show that the proposed models capture well the mainlobe responses of each shape. Thus, the proposed models may be used to accurately predict first-order scattering of scenes comprised of such shapes.;The second part of this dissertation focuses on the inverse problem of discerning the types of canonical shapes in a scene and estimating their corresponding model parameters from observed SAR phase history data. We present discrimination methods for classifying observed scattering into the geometric shape types. We compute the Cramer-Rao bounds for the models and characterize model parameter estimation accuracy for two estimation schemes. Finally, we present a feature extraction algorithm that classifies and estimates the canonical features from polarimetric phase history data. We use non-quadratic regularization to form sparsity-constrained 3D SAR images that are used to initialize the scatterer location, orientation, and size estimates. We test the feature extraction algorithm on simulated phase histories for densely-sampled and sparsely-sampled, monostatic and bistatic 3D SAR apertures. We show that even for sparsely-sampled apertures, the feature extraction algorithm is able to estimate geometric scattering features in the scene. Feature extraction for the proposed canonical shape models may be extended in future work for use in automatic target recognition.
机译:本文提出了一套合成孔径雷达(SAR)的三维散射特征模型。我们开发了一套规范形状的参数模型,这些模型捕获了与方面有关的高频散射,以获取双静态(和单静态)3D SAR相位历史响应。通过形状位置,方向和大小以及雷达发射器和接收器天线的方面和频率对模型进行参数化。我们通过结合物理光学(PO)和统一衍射理论(UTD)平面散射解决方案来开发模型,以近似标准形状的3D散射响应。我们使用散射预测软件验证了模型,并表明所提出的模型能够很好地捕获每种形状的主瓣响应。因此,所提出的模型可用于准确预测由这种形状构成的场景的一阶散射。本论文的第二部分着重于识别场景中规范形状的类型并估计其对应的模型参数的反问题。从观察到的SAR相位历史数据。我们提出了将观察到的散射分为几何形状类型的判别方法。我们计算模型的Cramer-Rao边界,并描述两种估计方案的模型参数估计精度。最后,我们提出了一种特征提取算法,该算法可对极化相位历史数据进行分类和估计。我们使用非二次正则化来形成稀疏性受限的3D SAR图像,这些图像用于初始化散射体的位置,方向和尺寸估计。我们针对模拟采样的相历史对密集采样和稀疏采样,单静态和双静态3D SAR孔径测试了特征提取算法。我们表明,即使对于稀疏采样的光圈,特征提取算法也能够估计场景中的几何散射特征。拟议的规范形状模型的特征提取可以在以后的工作中扩展,以用于自动目标识别。

著录项

  • 作者

    Jackson, Julie Ann.;

  • 作者单位

    The Ohio State University.;

  • 授予单位 The Ohio State University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 262 p.
  • 总页数 262
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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