Title :
Gaussian Process Regression for Estimating Chlorophyll Concentration in Subsurface Waters From Remote Sensing Data
Author :
Pasolli, Luca ; Melgani, Farid ; Blanzieri, Enrico
Author_Institution :
Dept. of Inf. Eng. & Comput. Sci., Univ. of Trento, Trento, Italy
fDate :
7/1/2010 12:00:00 AM
Abstract :
In this letter, we explore the effectiveness of a novel regression method in the context of the estimation of biophysical parameters from remotely sensed imagery as an alternative to state-of-the-art regression methods like those based on artificial neural networks and support vector machines. This method, called Gaussian process (GP) regression, formulates the learning of the regressor within a Bayesian framework, where the regression model is derived by assuming the model variables follow a Gaussian prior distribution encoding the prior knowledge about the output function. One of its interesting properties, which gives it a key advantage over state-of-the-art regression methods, is the possibility to tune the free parameters of the model in an automatic way. Experiments were focused on the problem of estimating chlorophyll concentration in subsurface waters. The achieved results suggest that the GP regression method is very promising from both viewpoints of estimation accuracy and free parameter tuning. Moreover, it handles particularly well the problem of limited availability of training samples, typically encountered in biophysical parameter estimation applications.
Keywords :
Gaussian distribution; geophysical techniques; neural nets; regression analysis; remote sensing; support vector machines; Bayesian framework; GP regression method; Gaussian prior distribution; Gaussian process regression; artificial neural networks; biophysical parameters; chlorophyll concentration estimation; free parameter tuning; model selection issue; model variables; output function; remote sensing data; subsurface waters; support vector machines; Biophysical parameters; Gaussian processes (GPs); chlorophyll concentration estimation; model selection issue; regression methods;
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
DOI :
10.1109/LGRS.2009.2039191