基于迭代反演的神经网络反演雪参数

Zhengxiao Chen, D. Davis, L. Tsang, Jenq-Neng Hwang
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引用次数: 6

摘要

利用密集介质多重散射模型训练的神经网络对被动微波遥感积雪参数进行反演。采用约束迭代反演方法。从5个亮度温度反演了4个参数。这四个参数分别是:雪中冰粒的平均粒径、雪密度、雪温和雪深。5个亮度温度分别是SSMI卫星提供的19 GHz垂直极化、19 GHz水平极化、22 GHz垂直极化、37 GHz垂直极化和37 GHz水平极化。基于神经网络约束迭代反演算法,我们还进行了地形的合成映射。实现了合成映射的检索。还考虑了地面真值信息的结合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inversion of Snow Parameters by Neural Network with Iterative Inversion
The inversion of snow parameters from passive microwave remote sensing measurements is performed with a neural network trained with a dense media multiple scattering model. A constrained iterative inversion scheme is used. Inversion of four parameters has been performed from five brightness temperatures. The four parameters are: mean-grain size of ice particles in snow, snow density, snow temperature and snow depth. The five brightness temperatures are that of 19 GHz vertical polarization, 19 GHz horizontal polarization, 22 GHz vertical polarization, 37 GHz vertical polarization, and 37 GHz horizontal polarization which are available from SSMI satellites. Based on the neural network constrained iterative inversion algorithm, we have also performed synthetic mapping of the terrain. Retrieval of synthetic mapping has been achieved. The incorporation of ground truth information is also considered.
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