首页> 外文会议>第21届国际摄影测量与遥感大会(ISPRS 2008)论文集 >A JOINT TEST STATISTIC CONSIDERING COMPLEX WISHART DISTRIBUTION: CHARACTERIZATION OF TEMPORAL POLARIMETRIC DATA
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A JOINT TEST STATISTIC CONSIDERING COMPLEX WISHART DISTRIBUTION: CHARACTERIZATION OF TEMPORAL POLARIMETRIC DATA

机译:包含复杂Wishart分布的联合检验统计量:时间极化数据的特征

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Polarimetric data of distributed scatterers can be fully characterized by the (3×3) Hermitian positive definite matrix which follows a complex Wishart distribution under Gaussian assumption. A second observation in time will also follow Wishart distribution. Then,these observations are correlated or uncorrelated process over time related to the monitored objects. To not to make any assumptionconcerning their independence, the (6×6) matrix which is also modeled as a complex Wishart distribution is used in this study to characterize the behavior of the temporal polarimetric data. According to the complex density function of (6×6) matrix, the joint statistics of two polarimetric observation is extracted. The results obtained in terms of the joint and the marginal distributions of Wishart process are based on the explicit closed-form expressions that can be used in pdf (probability density function) based statistical analysis.Especially, these statistical analysis can be a key parameter in target detection, change detection and SAR sequence tracking problem.As demonstrated the bias of the joint distribution can decrease with noise free signal and with increasing the canonical correlationparameter, number of looks and number of acquired SAR images. The results of this work are analyzed by means of simulated data.
机译:分布式散射体的偏振数据可以完全由(3×3)隐士正定矩阵的特征在于高斯假设下的复杂Wishart分布。及时的第二次观察也将遵循Wishart分布。然后,随着时间的推移,这些观测是与被监视对象相关的时间相关的或不相关的过程。为了不要使任何假设是其独立性,在本研究中使用了作为复杂的Wishart分布的(6×6)矩阵,以表征时间偏振数据的行为。根据(6×6)矩阵的复杂密度函数,提取两个偏振观察的关节统计。在关节和Wishart过程的边际分布方面获得的结果基于可用于PDF(概率密度函数)的基于统计分析的明确闭合表达式。特别地,这些统计分析可以是一个关键参数目标检测,变化检测和SAR序列跟踪问题.AS证明了接合分布的偏置可以随着无噪声信号而减小并且随着规范相关参数的增加,所获取的SAR图像的视图数量和数量。通过模拟数据分析该工作的结果。

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