首页> 外文会议>Geoscience and Remote Sensing Symposium, 2003. IGARSS '03. Proceedings. 2003 IEEE International >Markov Chain Monte Carlo method applied to a Bayesian fusion of remotely sensed data for surface parameters retrieval
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Markov Chain Monte Carlo method applied to a Bayesian fusion of remotely sensed data for surface parameters retrieval

机译:马尔可夫链蒙特卡罗方法应用于遥感数据的贝叶斯融合以获取表面参数

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An algorithm is presented for retrieving soil parameters using microwave remotely sensed data. The algorithm is based on Bayes' theorem of conditional probability and combines prior information on soil moisture and surface roughness with remote sensing measurements. In the Bayesian inference, the key point is the evaluation of a joint density probability function based on the knowledge of data sets consisting of soil parameters measurements and of the corresponding remote sensing data. The calculation of the marginal distribution has been obtained by a numerical integration known as Markov Chain Monte Carlo. This method is especially useful when the posterior density function has not a standard form. Furthermore, it is possible to obtain, at the same time, the distribution for all the parameters included in the process.
机译:提出了一种利用微波遥感数据检索土壤参数的算法。该算法基于条件概率的贝叶斯定理,并将有关土壤水分和表面粗糙度的先验信息与遥感测量结果相结合。在贝叶斯推断中,关键是基于对包括土壤参数测量值和相应遥感数据的数据集的了解,对联合密度概率函数进行评估。边际分布的计算已通过称为Markov Chain Monte Carlo的数值积分获得。当后密度函数不具有标准形式时,此方法特别有用。此外,有可能同时获得该过程中包括的所有参数的分布。

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