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首页> 外文期刊>Geoscience and Remote Sensing, IEEE Transactions on >Improved Estimation of Water Chlorophyll Concentration With Semisupervised Gaussian Process Regression
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Improved Estimation of Water Chlorophyll Concentration With Semisupervised Gaussian Process Regression

机译:用半监督高斯过程回归改进水叶绿素浓度的估算。

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摘要

This paper proposes a novel semisupervised regression framework for estimating chlorophyll concentrations in subsurface waters from remotely sensed imagery. This framework integrates multiobjective optimization and Gaussian processes (GPs) for boosting the accuracy of the estimation process when conditioned by limited labeled-sample availability. To this end, the labeled samples are exploited in conjunction with unlabeled ones (available at zero cost from the image under analysis) for learning the regression model. The estimation of the target of these unlabeled samples is handled by the simultaneous 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 measure, and the second is the log marginal likelihood, which merges two terms expressing the model complexity and the data fit capability, respectively. In order to alleviate the computational burden and, possibly, to improve the estimation process accuracy, two different selection strategies of unlabeled samples are compared to the simple random-sampling procedure. They are based on the estimated variance provided by the GP estimator and the differential entropy measure, respectively. Experimental results obtained on simulated and real data sets are reported and discussed.
机译:本文提出了一种新颖的半监督回归框架,用于从遥感图像中估计地下水域中的叶绿素浓度。该框架集成了多目标优化和高斯过程(GPs),可在有限的标记样本可用性限制下提高估计过程的准确性。为此,将标记的样本与未标记的样本(可从分析图像中以零成本购得)一起使用以学习回归模型。通过同时优化表示GP估计量泛化能力的两个不同标准来处理这些未标记样本的目标量估计。第一个是根据均方误差度量量化的经验风险,第二个是对数边际可能性,将两个分别表示模型复杂度和数据拟合能力的项合并。为了减轻计算负担并可能提高估计过程的准确性,将两种未标记样本的选择策略与简单随机抽样程序进行了比较。它们分别基于GP估计器和微分熵度量提供的估计方差。报告并讨论了在模拟和真实数据集上获得的实验结果。

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