Warped Gaussian Processes in Remote Sensing Parameter Estimation and
Causal Inference
- URL: http://arxiv.org/abs/2012.12105v1
- Date: Wed, 9 Dec 2020 09:02:59 GMT
- Title: Warped Gaussian Processes in Remote Sensing Parameter Estimation and
Causal Inference
- Authors: Anna Mateo-Sanchis, Jordi Mu\~noz-Mar\'i, Adri\'an P\'erez-Suay,
Gustau Camps-Valls
- Abstract summary: We show the good performance of the proposed model for the estimation of oceanic chlorophyll content from multispectral data.
The model consistently performs better than the standard GP and the more advanced heteroscedastic GP model.
- Score: 7.811118301686077
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: This paper introduces warped Gaussian processes (WGP) regression in remote
sensing applications. WGP models output observations as a parametric nonlinear
transformation of a GP. The parameters of such prior model are then learned via
standard maximum likelihood. We show the good performance of the proposed model
for the estimation of oceanic chlorophyll content from multispectral data,
vegetation parameters (chlorophyll, leaf area index, and fractional vegetation
cover) from hyperspectral data, and in the detection of the causal direction in
a collection of 28 bivariate geoscience and remote sensing causal problems. The
model consistently performs better than the standard GP and the more advanced
heteroscedastic GP model, both in terms of accuracy and more sensible
confidence intervals.
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