A new total variation model for restoring blurred and speckle noisy images

作者:Lu, Jian; Chen, Yupeng; Zou, Yuru*; Shen, Lixin
来源:International Journal of Wavelets, Multiresolution and Information Processing, 2017, 15(2): 1750009.
DOI:10.1142/S0219691317500096

摘要

In coherent imaging systems, such as the synthetic aperture radar (SAR), the observed images are affected by multiplicative speckle noise. This paper proposes a new variational model based on I-divergence for restoring blurred images with speckle noise. The model minimizes the sum of an I-divergence data fidelity term, a new quadratic penalty term based on the statistical property of the noise and the total-variation regularization term. The existence and uniqueness of a solution of the proposed model with some other characteristics are analyzed. Furthermore, an iterative algorithm is introduced to solve the proposed variational model. Our numerical experiments indicate that the proposed method performs favorably.