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A Bayesian Network-Based Method to Alleviate the Ill-Posed Inverse Problem: A Case Study on Leaf Area Index and Canopy Water Content Retrieval

机译:基于贝叶斯网络的不适定逆问题缓解方法:以叶面积指数和冠层含水量反演为例

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摘要

Retrieval of vegetation parameters from remotely sensed data using a radiative transfer model is generally hampered by the ill-posed inverse problem, which dramatically decreases the precision level of retrieved parameters. The purpose of this study was to use a Bayesian network-based method to allow the alleviation of the ill-posed inverse problem. This was achieved by introducing the correlations between the model free parameters into their prior joint probability distribution (PJPD), allowing the reduction of the probabilities of unrealistic combinations. Three sampling strategies intended to design three types of PJPDs that considered different correlations (represented by a correlation matrix) were presented. They were multivariate uniform distribution composed by independent free parameters, multivariate uniform distribution based on a simple correlation matrix, and multivariate Gaussian distribution based on a complicated correlation matrix, respectively. A case study of the presented method to retrieve leaf area index (LAI) and canopy water content (CWC) using the PROSAIL_5B (PROSPECT-5 + 4SAIL) model from Landsat 8 products was implemented. Results indicate that the presented method greatly improves the precision level of target parameters, with the coefficient of determination of 0.69, 0.77, and 0.82 and root-mean-square error (RMSE) of 0.55, 0.51, and 0.44 for LAI and and for CWC, respectively. Hence, the ill-posed inverse problem can be alleviated by the presented method, which can be widely applied for vegetation par- meters retrieval.
机译:使用辐射传递模型从遥感数据中检索植被参数通常会受到不适定逆问题的阻碍,这大大降低了检索参数的精度水平。这项研究的目的是使用基于贝叶斯网络的方法来缓解不适定逆问题。这是通过将无模型参数之间的相关性引入其先前的联合概率分布(PJPD)中来实现的,从而可以减少不现实的组合的概率。提出了旨在设计三种类型的PJPD的三种采样策略,这些PJPD考虑了不同的相关性(由相关矩阵表示)。它们分别是由独立的自由参数组成的多元均匀分布,基于简单相关矩阵的多元均匀分布和基于复杂相关矩阵的多元高斯分布。以提出的使用Landsat 8产品的PROSAIL_5B(PROSPECT-5 + 4SAIL)模型检索叶面积指数(LAI)和冠层含水量(CWC)的方法为例。结果表明,该方法大大提高了目标参数的精度水平,对于LAI和CWC,确定系数分别为0.69、0.77和0.82,均方根误差(RMSE)为0.55、0.51和0.44。 , 分别。因此,提出的方法可以缓解不适定的逆问题,该方法可以广泛地应用于植被参数检索。

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