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Model-based signal processing for radar imaging of targets with complex motions.

机译:基于模型的信号处理,用于复杂运动目标的雷达成像。

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摘要

Model-based signal processing for inverse synthetic aperture radar (ISAR) imaging of targets with complex motions is proposed in this dissertation. Target motion is the most important issue in radar imaging of an unknown target. Although widely recognized as a promising tool in target recognition, ISAR imaging is not yet fully operational in real-world data processing. This is mainly due to the fact that an unknown target, especially a non-cooperative target could have complex motions.; First, the performance of existing motion compensation algorithms is evaluated. For this purpose, three sets of radar images of an aircraft, including blind motion compensated images, truth motion compensated images, and predicted images using electromagnetic-code simulation are generated. The limitations of existing radar imaging algorithms are identified after a comparison of the radar images.; The remaining part of this research focuses on how to overcome these limitations. This is achieved by performing target feature extraction in the presence of complex motions, including three-dimensional (3D) motion, non-rigid body motion and high order motion. For a target with non-planar motion, an algorithm based on the phase analysis of multiple point scatterers is proposed to blindly detect the existence of 3D motion from radar data. An adaptive feature extraction technique is also applied for 3D ISAR image reconstruction from undersampled radar data when the target pose data is known. For a target with non-rigid body motions, adaptive chirplet signal representation is used to first separate signals from the main body and the rotating parts. Better extraction of target geometric features and micro-Doppler features are achieved after individual processing of the separated signal. For a target with high order motions, genetic algorithms are used to replace exhaustive search to reduce the computational time.; Throughout the research, the use of physical models is emphasized for better understanding of the radar data. Model-based processing, including adaptive joint time-frequency techniques and genetic algorithms are applied in the information extraction process. Point scatterer simulations are extensively used to test the correctness and to demonstrate the concept of the proposed methods. Results from measurement data are included to demonstrate the effectiveness of the work on real-world problems.
机译:本文针对复杂运动目标的反合成孔径雷达(ISAR)成像,提出了基于模型的信号处理方法。目标运动是未知目标雷达成像中最重要的问题。尽管ISAR成像已被广泛认为是目标识别中的有前途的工具,但它在现实世界的数据处理中尚未完全运行。这主要是由于以下事实:未知目标,特别是非合作目标可能具有复杂的运动。首先,评估现有运动补偿算法的性能。为此,生成了三组飞机的雷达图像,包括盲运动补偿图像,真运动补偿图像和使用电磁代码模拟的预测图像。比较雷达图像后,可以确定现有雷达成像算法的局限性。本研究的其余部分集中于如何克服这些限制。这是通过在存在复杂运动(包括三维(3D)运动,非刚性身体运动和高阶运动)的情况下执行目标特征提取来实现的。针对具有非平面运动的目标,提出了一种基于多点散射体相位分析的算法,从雷达数据中盲检测3D运动的存在。当目标姿态数据已知时,自适应特征提取技术也可用于从欠采样雷达数据重建3D ISAR图像。对于具有非刚性身体运动的目标,自适应chirplet信号表示用于首先从主体和旋转部件中分离信号。在对分离的信号进行单独处理之后,可以更好地提取目标几何特征和微多普勒特征。对于具有高阶运动的目标,使用遗传算法代替穷举搜索以减少计算时间。在整个研究过程中,强调了物理模型的使用,以更好地了解雷达数据。在信息提取过程中应用了基于模型的处理,包括自适应联合时频技术和遗传算法。点散射器仿真被广泛用于测试正确性并证明所提出方法的概念。测量数据的结果也包括在内,以证明解决实际问题的有效性。

著录项

  • 作者

    Li, Junfei.;

  • 作者单位

    The University of Texas at Austin.;

  • 授予单位 The University of Texas at Austin.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2002
  • 页码 148 p.
  • 总页数 148
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

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