Projects per year
Abstract
There is a need for efficient methods for estimating trends in spatio-temporal Earth Observation data. A suitable model for such data is a space-varying regression model, where the regression coefficients for the spatial locations are dependent. A second order intrinsic Gaussian Markov Random Field prior is used to specify the spatial covariance structure. Model parameters are estimated using the Expectation Maximisation (EM) algorithm, which allows for feasible computation times for relatively large data sets. Results are illustrated with simulated data sets and real vegetation data from the Sahel area in northern Africa. The results indicate a substantial gain in accuracy compared with methods based on independent ordinary least squares regressions for the individual pixels in the data set. Use of the EM algorithm also gives a substantial performance gain over Markov Chain Monte Carlo-based estimation approaches.
Original language | English |
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Pages (from-to) | 2885-2896 |
Journal | Computational Statistics & Data Analysis |
Volume | 53 |
Issue number | 8 |
DOIs | |
Publication status | Published - 2009 |
Subject classification (UKÄ)
- Probability Theory and Statistics
- Physical Geography
Fingerprint
Dive into the research topics of 'Fast estimation of spatially dependent temporal trends using Gaussian Markov Random fields'. Together they form a unique fingerprint.Projects
- 1 Finished
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Spatio-Temporal Estimation for Mixture Models and Gaussian Markov Random Fields - Applications to Video Analysis and Environmental Modelling
Lindström, J. (Research student), Holst, U. (Supervisor) & Lindgren, F. (Assistant supervisor)
2004/01/01 → 2008/05/23
Project: Dissertation
Activities
- 1 Supervision of masters students
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Estimating vegetation trends in the African Sahel using Gaussian Markov random fields
Lindström, J. (First/primary/lead supervisor)
2007Activity: Examination and supervision › Supervision of masters students