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参数化稀疏表征在雷达探测中的应用
引用本文:李刚,夏香根.参数化稀疏表征在雷达探测中的应用[J].雷达学报,2016,5(1):1-7.
作者姓名:李刚  夏香根
作者单位:1.(清华大学电子工程系 北京 100084)2.(特拉华大学电子与计算机工程系 纽瓦克 DE 19716)
基金项目:国家自然科学基金(61422110, 41271011),万人计划青年拔尖人才支持项目,清华大学自主科研项目,清华信息科学与技术国家实验室(筹)拔尖人才支持计划项目
摘    要:稀疏信号处理已经在雷达目标探测领域得到应用,并获得了优于传统方法的探测性能。然而,雷达目标探测过程中往往存在目标运动、雷达轨迹误差等未知因素,这导致预先设计的字典矩阵无法实现雷达信号的最优稀疏表征。该文将介绍字典学习的一个分支参数化稀疏表征,该方法通过构建参数化的字典矩阵,实现了对雷达探测过程中未知参数的动态学习和雷达信号的最优稀疏表征。该文还将介绍参数化稀疏表征在逆合成孔径雷达成像、合成孔径雷达自聚焦、基于微多普勒的目标识别等若干雷达探测问题中的应用。 

关 键 词:稀疏信号处理    雷达探测    字典学习
收稿时间:2015-12-14

Parametric Sparse Representation and Its Applications to Radar Sensing
Li Gang,Xia Xiang-Gen.Parametric Sparse Representation and Its Applications to Radar Sensing[J].Journal of Radars,2016,5(1):1-7.
Authors:Li Gang  Xia Xiang-Gen
Affiliation:1.(Department of Electronic Engineering, Tsinghua University, Beijing 100084, China)2.(Department of Electrical & Computer Engineering, University of Delaware, Newark, DE 19716, USA)
Abstract:Sparse signal processing has been utilized to the area of radar sensing. Due to the presence of unknown factors such as the motion of the targets of interest and the error of the radar trajectory, a predesigned dictionary cannot provide the optimally spare representation of the actual radar signals. This paper will introduce a method called parametric sparse representation, which is a special case of dictionary learning and can dynamically learn the unknown factors during the radar sensing and achieve the optimally sparse representation of radar signals. This paper will also introduce the applications of parametric sparse representation to Inverse Synthetic Aperture Radar imaging (ISAR) imaging, Synthetic Aperture Radar imaging (SAR) autofocusing and target recognition based on micro-Doppler effect. 
Keywords:
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