Image Zooming
Technique Based on the Split Bregman Iteration with Fractional Order Variation
Regularization
Liping Wang,
Shangbo Zhou and Awudu Karim College of Computer Science, Chongqing University,
China
Abstract: It is always a challenging work to develop an accurate
and effective method to reconstruct a degraded image. In this paper, the
nonlocal variation Fractional Total Variation (FTV) regularization technique
for image zooming is investigated. To enhance edges, yet preserve textures,
fractional order calculus based image zooming method is proposed, which can
deal well with fine structures like textures. To solve the nonlinear
Euler-Lagrange equation associated with the nonlocal variation FTV regularization
model, we propose a nonlocal total variation method for image zooming based on
the split Bregman iteration. Enlarging and de-noising experimental results show
that the proposed method has effectiveness and reliability by comparing to some
methods mentioned in the paper.
Keywords: Image zooming, total variation, split bregman
iteration, fractional order.
Received
December 26, 2014; accepted June 1, 2015