Performance Study of the Robust Bayesian Regularization Technique for Remote Sensing Imaging in Geophysical Applications

I. Villalón-Turrubiates, Adalberto Herrera-Nuñez
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引用次数: 3

Abstract

In this paper, a performance study of a methodology for reconstruction of high-resolution remote sensing imagery is presented. This method is the robust version of the Bayesian regularization (BR) technique, which performs the image reconstruction as a solution of the ill-conditioned inverse spatial spectrum pattern (SSP) estimation problem with model uncertainties via unifying the Bayesian minimum risk (BMR) estimation strategy with the maximum entropy (ME) randomized a priori image model and other projection-type regularization constraints imposed on the solution. The results of extended comparative simulation study of a family of image formation/enhancement algorithms that employ the RBR method for high-resolution reconstruction of the SSP is presented. Moreover, the computational complexity of different methods are analyzed and reported together with the scene imaging protocols. The advantages of the remote sensing imaging experiment (that employ the BR-based estimator) over the cases of poorer designed experiments (that employ the conventional matched spatial filtering as well as the least squares techniques) are verified trough the simulation study. Finally, the application of this estimator in geophysical applications of remote sensing imagery is described.
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遥感成像鲁棒贝叶斯正则化技术在地球物理应用中的性能研究
本文介绍了一种高分辨率遥感图像重建方法的性能研究。该方法是贝叶斯正则化(BR)技术的鲁棒版本,通过将贝叶斯最小风险(BMR)估计策略与随机化先验图像模型的最大熵(ME)和其他投影型正则化约束统一起来,将图像重建作为具有模型不确定性的病态逆空间频谱模式(SSP)估计问题的解决方案。介绍了采用RBR方法对SSP进行高分辨率重建的一系列图像形成/增强算法的扩展比较仿真研究结果。此外,结合场景成像协议,分析和报告了不同方法的计算复杂度。通过仿真研究验证了遥感成像实验(采用基于br的估计器)相对于设计较差的实验(采用传统的匹配空间滤波和最小二乘技术)的优势。最后介绍了该估计器在遥感影像地球物理应用中的应用。
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