Predictor-Corrector Method for Total Variation Based Image Denoising
Authors
Abstract
Since \u00a0their \u00a0introduction \u00a0in \u00a0a \u00a0classic \u00a0paper \u00a0by \u00a0Rudin, \u00a0Osher \u00a0and \u00a0Fetemi \u00a0[1], \u00a0total \u00a0variation
minimizing models have become one of the most popular and successful methodology for image restoration.
More recently, there has been a resurgence of interest and exciting new developments, some extending the
applicabilities to inpainting, blind deconvolution and vector-valued images, while others offer improvements
in \u00a0better \u00a0preservation \u00a0of \u00a0contrast, \u00a0geometry \u00a0and \u00a0textures, \u00a0in \u00a0ameliorating \u00a0the \u00a0staircasing \u00a0effect, \u00a0and \u00a0in
exploiting the multiscale nature of the models. In addition, new computational methods have been proposed
with \u00a0improved \u00a0computational \u00a0speed \u00a0and \u00a0robustness. \u00a0In \u00a0this \u00a0paper, \u00a0a \u00a0predictor-Corrector \u00a0techniques \u00a0are
pointed out and applied in to the total variation-based image denoising.The numerical experiments shows the
improvement are fairly valid.