Linear Smoothing of Noisy Spatial Temporal Series
Abstract
The main objective of the study is the development of a linear filter to extract the signal from a spatio-temporal series affected by measurement error. We assume that the evolution of the unobservable signal can be modelled by a space time autoregressive process. In its vectorial form, the model admits a state space representation allowing the direct application of the Kalman filter machinery to predict the unobservable state vector on the basis of the sample information. Having introduced the model, referred to as a STARG+Noise model, the study discusses Maximum Likelihood (ML) parameter estimation assuming knowledge of the variance of the noise process. Consistent method of moments estimators of the autoregressive coefficients and noise variance are also derived, primarily to be used as inputs in the ML estimation procedure. Finally, we consider some simulation studies and an investigation involving sulphur dioxide level monitoring.
DOI: https://doi.org/10.3844/jmssp.2005.309.321
Copyright: © 2005 Valter Di Giacinto, Ian dryden, Luigi ippoliti and Luca Romagnoli. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
- 2,933 Views
- 2,663 Downloads
- 0 Citations
Download
Keywords
- Gaussian markov random field
- image analysis
- maximum likelihood estimation
- measurement error
- Kalman filter
- STARMA model
- STARG model
- state space model