基于esprit的改进体积散射模型散射功率分解

Hiroyoshi Yamada, R. Komaya, Y. Yamaguchi, R. Sato
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引用次数: 0

摘要

POLSAR数据的散射功率分解是雷达偏振测量的有力工具之一。有几种基于模型的分解技术。然而,由于POLSAR图像中独立观测点的数量有限,这些技术需要几个假设才能获得唯一解。作者提出了一种基于POL-InSAR数据集的替代技术。通过使用POL-InSAR数据集,我们可以增加可观测数据的数量。然而,体积散射分量的选择仍然是一个问题。最近,Dr. Arii等人提出了一种广义体散射模型,并利用自适应非负特征值分解技术将其应用于POLSAR数据集。在本报告中,我们将该模型应用于基于esprit的POL-InSAR分解技术,并通过实验验证了估计性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Esprit-based scattering power decomposition by using modified volume scattering model
The scattering power decomposition for POLSAR data is one of the powerful tools in the radar polarimetry. There are several model-based decomposition techniques. However, since the number of independent observables in POLSAR images is limited, these techniques require several assumptions to obtain unique solution. The authors have proposed an alternative technique with POL-InSAR dataset. By using the POL-InSAR dataset, we can increase the number of observables. However, selection of volume scattering component was still a problem. Recently, Dr. Arii et. al., proposed a generalized volume scattering model, and applied it to the POLSAR dataset with the adaptive non-negative eigenvalue decomposition technique. In this report, we appy the model to the ESPRIT-based POL-InSAR decomposition technique and verify the estimation performance experimentally.
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