首页> 外文会议>IEEE International Geoscience and Remote Sensing Symposium >ESTIMATION OF VEGETATION CHLOROPHYLL CONTENT WITH VARIATIONAL HETEROSCEDASTIC GAUSSIAN PROCESSES
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ESTIMATION OF VEGETATION CHLOROPHYLL CONTENT WITH VARIATIONAL HETEROSCEDASTIC GAUSSIAN PROCESSES

机译:植被叶绿素含量与变分异质型高斯过程

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Accurate estimation of biophysical variables is the key to monitor our Planet. In particular, leaf chlorophyll content helps in interpreting the chlorophyll fluorescence signal from space, which is an accurate indicator of the actual state of the vegetation beyond greenness. Recently, the family of Bayesian nonparametric methods has provided excellent results in these situations. A particularly useful method in this framework is the Gaussian Processes regression (GP). However, standard GP assumes that the variance of the noise process is independent of the signal, which does not hold in most of the problems. In this paper, we propose a non-standard variational approximation that allows accurate inference in signal-dependent noise scenarios. We show that the so-called Variational Heteroscedastic Gaussian Process (VHGP) regression is an excellent alternative to standard GP for the retrieval of vegetation chlorophyll content from hyperspectral images. In general VHGP outperforms GP (and many other empirical and machine learning techniques) in accuracy and bias, and reveals more robust when a low number of examples is available.
机译:准确估计生物物理变量是监控我们星球的关键。特别地,叶叶酚含量有助于解释来自空间的叶绿素荧光信号,这是植被的实际状态超出绿色的准确指标。最近,贝叶斯非参数方法家族在这些情况下提供了出色的结果。在该框架中特别有用的方法是高斯进程回归(GP)。然而,标准GP假定噪声过程的方差独立于信号,这在大多数问题中不存在。在本文中,我们提出了一种非标准变分近似,允许在信号相关的噪声场景中准确推理。我们表明所谓的变分异质型高斯过程(VHGP)回归是标准GP的标准GP,用于从高光谱图像检索植被叶绿素含量的标准GP。通常,VHGP在准确性和偏置方面优于GP(以及许多其他实证和机器学习技术),并且当可用数量的示例时,揭示更强大的稳健。

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