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Semisupervised Gaussian Process Regression for Biophysical Parameter Estimation

机译:生物物理参数估计的半质象高斯过程回归

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In this paper, we propose a novel semisupervised Gaussian regression approach for the estimation of biophysical parameters from remote sensing data with limited training samples. During the learning phase, unlabeled samples are exploited to inflate the training set. The estimation of the targets associated with these samples is carried out by solving an optimization problem formulated within a genetic optimization framework. The search process of the target estimates is guided by the separate or joint optimization of two different criteria expressing the generalization capabilities of the GP estimator. The first is the empirical risk quantified in terms of the mean square error (MSE) measure; and the second is the log marginal likelihood. This last merges two terms expressing the model complexity and the data fit capability, respectively. Experimental results obtained on a real dataset representing chlorophyll concentrations in coastal waters confirm the interesting capabilities of the proposed approach.
机译:在本文中,我们提出了一种新颖的半体验高斯回归方法,用于估计来自有限训练样本的遥感数据的生物物理参数。在学习阶段,利用未标记的样本来膨胀训练集。通过求解在遗传优化框架内配制的优化问题来进行与这些样品相关的目标的估计。目标估计的搜索过程是由表达GP估计器的泛化能力的两个不同标准的单独或联合优化引导。首先是在均方误差(MSE)测量方面量化的经验风险;第二个是日志边缘可能性。最后,这是分别表示模型复杂性的两个术语和数据适合能力。在代表沿海水域叶绿素浓度的真实数据集获得的实验结果证实了所提出的方法的有趣能力。

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