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Non-homogeneous priors in a Bayesian latent class model for ocean color inversion

机译:贝叶斯潜在类模型中海洋颜色反演的非均匀先验

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From the multispectral top-of-atmosphere observations, ocean colour inversion aims at separating atmosphere and water contribution. In this context, we propose a novel Bayesian model with a focus on the definition of non-homogeneous priors on the aerosol and water multispectral signatures. The considered priors are set conditionally to observed covariates, typically geometry acquisition conditions and pre-estimates by a standard algorithm. We demonstrate from numerical experiments performed for real data the relevance of our non-homogeneous Bayesian setting to retrieve geophysically-consistent ocean colour images, in particular when dealing with complex coastal waters where standard algorithms perform poorly. Using a groundtruthed dataset, quantitative comparisons with operational schemes stress the overall improvement on the relative absolute error (respectively, 67% compared with the standard ESA MEGS algorithm and 9% compared with the ESA C2R neural network, for 12 bands ranging from 412 to 865 nm).
机译:从多光谱大气层顶观察中,海洋颜色反演的目的是分离大气和水的贡献。在这种情况下,我们提出了一个新颖的贝叶斯模型,重点是对气溶胶和水多光谱特征的非均质先验的定义。考虑的先验条件设置为观察到的协变量,通常是几何采集条件,并通过标准算法进行预估计。我们从对真实数据进行的数值实验中证明了非均匀贝叶斯设置与检索地理上一致的海洋彩色图像的相关性,特别是在处理标准算法效果不佳的复杂沿海水域时。使用地面数据集,与操作方案的定量比较强调了相对绝对误差的整体改善(分别为412至865的12个波段,相对于标准ESA MEGS算法为67%,与ESA C2R神经网络相比为9%)。纳米)。

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