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PolSAR-Decomposition-Based Extended Water Cloud Modeling for Forest Aboveground Biomass Estimation

机译:基于PolSAR分解的森林地上生物量估计的扩展水云模型

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Polarimetric synthetic aperture radar (PolSAR) remote sensing has been widely used for forest mapping and monitoring. PolSAR data has the capability to provide scattering information that is contributed by different scatterers within a single SAR resolution cell. A methodology for a PolSAR-based extended water cloud model (EWCM) has been proposed and evaluated in this study. Fully polarimetric phased array type L-band synthetic aperture radar (PALSAR) data of advanced land observing satellite (ALOS) was used in this study for forest aboveground biomass (AGB) retrieval of Dudhwa National Park, India. The shift in the polarization orientation angle (POA) is a major problem that affects the PolSAR-based scattering information. The two sources of POA shift are Faraday rotation angle (FRA) and structural properties of the scatterer. Analysis was carried out to explore the effect of FRA in the SAR data. Deorientation of PolSAR data was implemented to minimize any ambiguity in the scattering retrieval of model-based decomposition. After POA compensation of the coherency matrix, a decrease in the power of volume scattering elements was observed for the forest patches. This study proposed a framework to extend the water cloud model for AGB retrieval. The proposed PolSAR-based EWCM showed less dependency on field data for model parameters retrieval. The PolSAR-based scattering was used as input model parameters to derive AGB for the forest area. Regression between PolSAR-decomposition-based volume scattering and AGB was performed. Without deorientation of the PolSAR coherency matrix, EWCM showed a modeled AGB of 92.90 t ha ?1 , and a 0.36 R 2 was recorded through linear regression between the field-measured AGB and the modeled output. After deorientation of the PolSAR data, an increased R 2 (0.78) with lower RMSE (59.77 t ha ?1 ) was obtained from EWCM. The study proves the potential of a PolSAR-based semiempirical model for forest AGB retrieval. This study strongly recommends the POA compensation of the coherency matrix for PolSAR-scattering-based semiempirical modeling for forest AGB retrieval.
机译:极化合成孔径雷达(PolSAR)遥感已广泛用于森林制图和监测。 PolSAR数据具有提供由单个SAR分辨率单元内的不同散射体贡献的散射信息的能力。本研究提出并评估了基于PolSAR的扩展水云模型(EWCM)的方法。这项研究使用了先进的陆地观测卫星(ALOS)的全极化相控阵L型合成孔径雷达(PALSAR)数据对印度Dudhwa国家公园的森林地上生物量(AGB)进行了检索。极化取向角(POA)的偏移是一个主要问题,会影响基于PolSAR的散射信息。 POA偏移的两个来源是法拉第旋转角(FRA)和散射体的结构特性。进行分析以探究FRA在SAR数据中的作用。实现了PolSAR数据的去定向,以最大程度地减少基于模型的分解的散射检索中的任何歧义。在对一致性矩阵进行POA补偿后,对于森林斑块,体积散射元素的功效降低了。这项研究提出了一个框架,以扩展用于AGB检索的水云模型。提出的基于PolSAR的EWCM对模型参数检索显示出对现场数据的依赖性较小。基于PolSAR的散射用作输入模型参数,以得出森林面积的AGB。进行基于PolSAR分解的体积散射与AGB之间的回归。在没有取消PolSAR相干性矩阵的定向的情况下,EWCM显示的模型AGB为92.90 t ha?1,通过现场测量的AGB和模型输出之间的线性回归记录为0.36 R 2。在对PolSAR数据进行脱位后,从EWCM获得了较高的R 2(0.78)和较低的RMSE(59.77 t ha?1)。该研究证明了基于PolSAR的森林AGB检索半经验模型的潜力。这项研究强烈建议对基于PolSAR散射的森林AGB检索半经验模型的相干矩阵进行POA补偿。

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