DocumentCode
112965
Title
Hyper-Spectral Image Analysis With Partially Latent Regression and Spatial Markov Dependencies
Author
Deleforge, Antoine ; Forbes, Florence ; Ba, Sileye ; Horaud, Radu
Author_Institution
Friedrich-Alexander-Univ., Erlangen, Germany
Volume
9
Issue
6
fYear
2015
fDate
Sept. 2015
Firstpage
1037
Lastpage
1048
Abstract
Hyper-spectral data can be analyzed to recover physical properties at large planetary scales. This involves resolving inverse problems which can be addressed within machine learning, with the advantage that, once a relationship between physical parameters and spectra has been established in a data-driven fashion, the learned relationship can be used to estimate physical parameters for new hyper-spectral observations. Within this framework, we propose a spatially constrained and partially-latent regression method which maps high-dimensional inputs (hyper-spectral images) onto low-dimensional responses (physical parameters such as the local chemical composition of the soil). The proposed regression model comprises two key features. First, it combines a Gaussian mixture of locally linear mappings (GLLiM) with a partially latent response model. While the former makes high-dimensional regression tractable, the latter enables to deal with physical parameters that cannot be observed or, more generally, with data contaminated by experimental artifacts that cannot be explained with noise models. Second, spatial constraints are introduced in the model through a Markov random field (MRF) prior which provides a spatial structure to the Gaussian-mixture hidden variables. Experiments conducted on a database composed of remotely sensed observations collected from the Mars planet by the Mars Express orbiter demonstrate the effectiveness of the proposed model.
Keywords
Gaussian processes; Markov processes; hyperspectral imaging; image processing; learning (artificial intelligence); regression analysis; GLLiM; Gaussian mixture of locally linear mappings; MRF; Markov random field; Mars Express orbiter; Mars planet; data-driven fashion; hyper-spectral data; hyper-spectral image analysis; large planetary scales; machine learning; partially latent regression; partially-latent regression method; spatial Markov dependencies; Approximation methods; Computational modeling; Data models; Markov processes; Mars; Vectors; Zinc; High-dimensional regression; Markov random field; Mars physical properties; OMEGA instrument; hyper-spectral images; latent variable model; mixture models;
fLanguage
English
Journal_Title
Selected Topics in Signal Processing, IEEE Journal of
Publisher
ieee
ISSN
1932-4553
Type
jour
DOI
10.1109/JSTSP.2015.2416677
Filename
7067395
Link To Document