Optics and Precision Engineering, Volume. 22, Issue 1, 186(2014)
Image adaptive filtering using general auto-regressive model
As the model fused a linear model and a nonlinear model is beneficial to digital image filtering, this paper explores a generalized autoregressive model on the basis of Weierstrass theory for image adaptive filtering. The model fuses both linear and nonlinear autoregressive models into a uniform expression and simulation experiments verify that the model can fit both conventional linear and nonlinear autoregressive models well. By using a bi-vector instead of a scalar parameter, the bi-dimensional expression of the model is deduced, then a generalized M-estimator is chosen to estimate parameters by a contrast analysis. The experimental results indicate that the proposed algorithm has a fast convergence speed, the average iterations are no more than 6 times and the computing time for linear model and quadratic model is 150 s and 418 s respectively. Moreover,it can remove image noises while conserve detailed image information effectively.
Get Citation
Copy Citation Text
HAO Fei, SHI Jin-fei, ZHANG Zhi-sheng, CHEN Ru-wen. Image adaptive filtering using general auto-regressive model[J]. Optics and Precision Engineering, 2014, 22(1): 186
Category:
Received: May. 10, 2013
Accepted: --
Published Online: Feb. 18, 2014
The Author Email: Fei HAO (hf_1982@njit.edu.cn)