Two-dimensional signal and image processing
Two-dimensional signal and image processing
Multidimensional Digital Signal Processing
Multidimensional Digital Signal Processing
Optimum quarter-plane autoregressive modeling of 2-D fields usingfour-field lattice approach
IEEE Transactions on Signal Processing
Two-dimensional orthogonal lattice structures for autoregressivemodeling of random fields
IEEE Transactions on Signal Processing
Optimum asymmetric half-plane autoregressive lattice parameter modeling of 2-D fields
IEEE Transactions on Signal Processing
Bispectral analysis and model validation of texture images
IEEE Transactions on Image Processing
Hi-index | 0.00 |
This paper considers the problem of estimating the moving average (MA) parameters of a two-dimensional autoregressive moving average (2-D ARMA) model. To solve this problem, a new algorithm that is based on a recursion relating the ARMA parameters and cepstral coefficients of a 2-D ARMA process is proposed. On the basis of this recursion, a recursive equation is derived to estimate the MA parameters from the cepstral coefficients and the autoregressive (AR) parameters of a 2-D ARMA process. The cepstral coefficients are computed benefiting from the 2-D FFT technique. Estimation of the AR parameters is performed by the 2-D modified Yule---Walker (MYW) equation approach. The development presented here includes the formulation for real-valued homogeneous quarter-plane (QP) 2-D ARMA random fields, where data are propagated using only the past values. The proposed algorithm is computationally efficient especially for the higher-order 2-D ARMA models, and has the advantage that it does not require any matrix inversion for the calculation of the MA parameters. The performance of the new algorithm is illustrated by some numerical examples, and is compared with another existing 2-D MA parameter estimation procedure, according to three performance criteria. As a result of these comparisons, it is observed that the MA parameters and the 2-D ARMA power spectra estimated by using the proposed algorithm are converged to the original ones