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Unifying Experiment Design and Convex Regularization Techniques for Enhanced Imaging With Uncertain Remote Sensing Data—Part I: Theory

机译:具有不确定遥感数据的增强成像的统一实验设计和凸正则化技术-第一部分:理论

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摘要

This paper considers the problem of high-resolution remote sensing (RS) of the environment formalized in the terms of a nonlinear ill-posed inverse problem of estimation of the power spatial spectrum pattern (SSP) of the wavefield scattered from an extended remotely sensed scene via processing the discrete measurements of a finite number of independent realizations of the observed degraded data signals [single realization of the trajectory signal in the case of synthetic aperture radar (SAR)]. We address a new descriptive experiment design regularization (DEDR) approach to treat the SSP reconstruction problem in the uncertain RS environment that unifies the paradigms of maximum likelihood nonparametric spectral estimation, descriptive experiment design, and worst case statistical performance optimization-based regularization. Pursuing such an approach, we establish a family of the DEDR-related SSP estimators that encompass a manifold of algorithms ranging from the traditional matched filter to the modified robust adaptive spatial filtering and minimum variance beamforming methods. The theoretical study is resumed with the development of a fixed-point iterative DEDR technique that incorporates the regularizing projections onto convex solution sets into the SSP reconstruction procedures to enforce the robustness and convergence. For the imaging SAR application, the proposed DEDR approach is aimed at performing, in a single optimized processing, adaptive SAR focusing, speckle reduction and RS scene image enhancement, and accounts for the possible presence of uncertain trajectory deviations.
机译:本文考虑了从扩展的遥感场景散射的波场的功率空间谱图(SSP)的非线性不适定逆估计的形式化形式化的环境的高分辨率遥感(RS)问题通过处理观测到的退化数据信号的有限数量独立实现的离散测量[在合成孔径雷达(SAR)的情况下,轨迹信号的单个实现]。我们解决了一种新的描述性实验设计正则化(DEDR)方法,用于在不确定的RS环境中处理SSP重构问题,该方法统一了最大似然非参数频谱估计,描述性实验设计和基于最坏情况的统计性能优化正则化的范式。遵循这种方法,我们建立了一系列与DEDR相关的SSP估计器,这些估计器涵盖了从传统的匹配滤波器到改进的鲁棒自适应空间滤波和最小方差波束形成方法等一系列算法。随着定点迭代DEDR技术的发展,恢复了理论研究,该技术将正则化投影到凸解集上并入SSP重建程序,以增强鲁棒性和收敛性。对于成像SAR应用,提出的DEDR方法旨在在单个优化处理中执行自适应SAR聚焦,斑点减少和RS场景图像增强,并考虑了不确定轨迹偏差的可能存在。

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