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A new dual-baseline polarimetric SAR interferometry for vegetation height inversion using complex least squares adjustment

机译:利用复杂最小二乘平差的植被高度反演的新双基线极化SAR干涉仪

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Vegetation height is an important parameter in quantifying the terrestrial carbon cycle effectively. P band synthetic aperture radar (SAR) is good at monitoring forest areas, which is sensitive to the contributions from vegetation layer and ground. Random Volume over Ground (RVoG) model has been widely applied to forest height inversion. Corresponding single baseline or muti-baseline methods have been established, such as three-stage and nonlinear iteration methods, whose good performance have been test with differential wavelength and areas. However, all the methods do not pay much attention to the complex coherence errors, and take measure to reduce the errors. In this paper, a new dual-baseline polarimetric SAR interferometry vegetation height inversion method, dual-baseline complex least squares adjustment (DBCLSA), is proposed. The DBCLSA method behind the concept of complex least squares adjustment. The main idea of DBCLSA method is as follow. Firstly, the adjustment model is summarized as combined adjustment of complex real and imagine parts. And then, stochastic model is established based on Cramer-Rao bounds. After that, we show the linearization method and parameter solving method. At last, the obtained volume-only coherence values are used to vegetation height retrieval. The DBCLSA is validated on E-SAR P band data of BioSAR2008 in Sweden. The results of Cloude dual-baseline method are computed at the same time. Compared with ground true measurement data, the result of new approach is more accurate.
机译:植被高度是有效量化地球碳循环的重要参数。 P波段合成孔径雷达(SAR)擅长监测森林面积,对植被层和地面的贡献很敏感。地上随机体积(RVoG)模型已广泛应用于森林高度反演。已经建立了相应的单基线或多基线方法,例如三阶段和非线性迭代方法,并在不同的波长和面积下测试了它们的良好性能。但是,所有的方法都没有对复杂的相干误差给予太大的关注,而是采取措施减少了误差。本文提出了一种新的双基线极化SAR干涉法植被高度反演方法,即双基线复最小二乘平差法(DBCLSA)。复杂最小二乘平差概念背后的DBCLSA方法。 DBCLSA方法的主要思想如下。首先,将调整模型概括为复杂实部和虚构零件的组合调整。然后,基于Cramer-Rao边界建立了随机模型。之后,我们展示了线性化方法和参数求解方法。最后,将获得的仅体积相干值用于植被高度检索。 DBCLSA已在瑞典BioSAR2008的E-SAR P波段数据上得到验证。同时计算Cloude双基线方法的结果。与地面真实测量数据相比,新方法的结果更加准确。

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