Speckle Reduction with Trained Nonlinear Diffusion Filtering

02/24/2017
by   Wensen Feng, et al.
0

Speckle reduction is a prerequisite for many image processing tasks in synthetic aperture radar (SAR) images, as well as all coherent images. In recent years, predominant state-of-the-art approaches for despeckling are usually based on nonlocal methods which mainly concentrate on achieving utmost image restoration quality, with relatively low computational efficiency. Therefore, in this study we aim to propose an efficient despeckling model with both high computational efficiency and high recovery quality. To this end, we exploit a newly-developed trainable nonlinear reaction diffusion(TNRD) framework which has proven a simple and effective model for various image restoration problems. In the original TNRD applications, the diffusion network is usually derived based on the direct gradient descent scheme. However, this approach will encounter some problem for the task of multiplicative noise reduction exploited in this study. To solve this problem, we employed a new architecture derived from the proximal gradient descent method.Taking into account the speckle noise statistics, the diffusion process for the despeckling task is derived. We then retrain all the model parameters in the presence of speckle noise. Finally, optimized nonlinear diffusion filtering models are obtained, which are specialized for despeckling with various noise levels. Experimental results substantiate that the trained filtering models provide comparable or even better results than state-of-the-art nonlocal approaches. Meanwhile, our proposed model merely contains convolution of linear filters with an image, which offers high level parallelism on GPUs. As a consequence, for images of size 512 × 512, our GPU implementation takes less than 0.1 seconds to produce state-of-the-art despeckling performance.

READ FULL TEXT

page 21

page 22

page 23

page 24

page 25

page 33

page 34

research
10/10/2015

Fast and Accurate Poisson Denoising with Optimized Nonlinear Diffusion

The degradation of the acquired signal by Poisson noise is a common prob...
research
03/19/2015

On learning optimized reaction diffusion processes for effective image restoration

For several decades, image restoration remains an active research topic ...
research
09/19/2016

Poisson Noise Reduction with Higher-order Natural Image Prior Model

Poisson denoising is an essential issue for various imaging applications...
research
09/21/2016

Image Denoising via Multi-scale Nonlinear Diffusion Models

Image denoising is a fundamental operation in image processing and holds...
research
04/21/2014

A higher-order MRF based variational model for multiplicative noise reduction

The Fields of Experts (FoE) image prior model, a filter-based higher-ord...
research
03/27/2017

Discriminative Transfer Learning for General Image Restoration

Recently, several discriminative learning approaches have been proposed ...
research
08/03/2019

A Gray Level Indicator-Based Regularized Telegraph Diffusion Equation Applied to Image Despeckling

In this work, a gray level indicator based non-linear telegraph diffusio...

Please sign up or login with your details

Forgot password? Click here to reset