In this paper, we analyze a novel algorithm for 2-D ARMA model parameter estimation in the presence of noise and then develop a fast and efficient blind image restoration algorithm. We show that the novel algorithm can minimize a quadratic convex optimization problem and has a lower computational complexity than the conventional algorithms. As a result, the novel algorithm involves no convergence and local minimum issue. Moreover, the proposed blind image restoration algorithm can overcome the local minimization problem. Computed results confirm that the novel algorithm can more quickly obtain more accurate estimates than the conventional algorithms in the presence of noise
In this paper, an adaptive, frequency domain, steepest descent algorithm for two-dimensional (2-D) s...
A recursive algorithm for ARMA (autoregressive moving average) filtering has been developed in a com...
In this paper, we address blind identification of an ARMA model convolved with an impulse sequence v...
The parameter estimation problem of a two-dimensional autoregressive moving average (2-D ARMA) model...
By applying some iterative algorithm a nonlinear minimization problem is solved in order to obtain e...
The parameter estimation problem of a two-dimensional autoregressive moving average (2-D ARMA) model...
The linear algorithm for two-dimensional least square approximation in the frequency domain (2D-FD-L...
This paper proposes a new method for identifying ARMA models in the presence of additive white noise...
Abstract—A linear and nonlinear autoregressive (AR) moving average (MA) (ARMA) identification algori...
In this paper a set of formulations of an N-dimensional (ND) autoregressive-moving average (ARMA) mo...
Abstract. To identify time-varying matrix parameter participating in ARMAX-model description, a new ...
A linear algorithm for two-dimensional (2-D) least square (LS) approximation in the frequency domain...
This paper presents a second-order statistics based method for blind identification of non-minimum p...
A linear algorithm for two-dimensional (2-D) least square (LS) approximation in the frequency domain...
The linear algorithm for two-dimensional least square approximation in the frequency domain (2D-FD-L...
In this paper, an adaptive, frequency domain, steepest descent algorithm for two-dimensional (2-D) s...
A recursive algorithm for ARMA (autoregressive moving average) filtering has been developed in a com...
In this paper, we address blind identification of an ARMA model convolved with an impulse sequence v...
The parameter estimation problem of a two-dimensional autoregressive moving average (2-D ARMA) model...
By applying some iterative algorithm a nonlinear minimization problem is solved in order to obtain e...
The parameter estimation problem of a two-dimensional autoregressive moving average (2-D ARMA) model...
The linear algorithm for two-dimensional least square approximation in the frequency domain (2D-FD-L...
This paper proposes a new method for identifying ARMA models in the presence of additive white noise...
Abstract—A linear and nonlinear autoregressive (AR) moving average (MA) (ARMA) identification algori...
In this paper a set of formulations of an N-dimensional (ND) autoregressive-moving average (ARMA) mo...
Abstract. To identify time-varying matrix parameter participating in ARMAX-model description, a new ...
A linear algorithm for two-dimensional (2-D) least square (LS) approximation in the frequency domain...
This paper presents a second-order statistics based method for blind identification of non-minimum p...
A linear algorithm for two-dimensional (2-D) least square (LS) approximation in the frequency domain...
The linear algorithm for two-dimensional least square approximation in the frequency domain (2D-FD-L...
In this paper, an adaptive, frequency domain, steepest descent algorithm for two-dimensional (2-D) s...
A recursive algorithm for ARMA (autoregressive moving average) filtering has been developed in a com...
In this paper, we address blind identification of an ARMA model convolved with an impulse sequence v...