Walid Ibrahim and Mahmoud R. El-Sakka, "Memory-Based Speckle
Reducing Anisotropic Diffusion", International Conference on
Imaging Theory and Applications, IMAGAPP'2009, pp. 64-69,
February 2009, Lisbon, Portugal.
Abstract
Diffusion filters are usually modelled as partial differential
equations (PDEs) and used to reduce image noise without
affecting the image main features. However, they have a
drawback of broadening object boundaries and dislocating
edges. Such drawbacks limit the ability of diffusion
techniques applied to image processing. Yu and Acton.
introduced the speckle reducing anisotropic diffusion (SRAD)
to reduce speckle noise from ultrasound (US) and synthetic
aperture radar (SAR) images. Incorporating the instantaneous
coefficient of variation (ICOV) as the diffusion coefficient
and edge detector, SRAD gives significantly enhanced images
where most of the speckle noise is reduced. Yet, SRAD still
faces the same problem of ordinary diffusion filters where the
boundary broadening and edge dislocation affect its overall
performance. In this paper, we introduce a novel approach to
the diffusion filtering process, where a memory term is
introduced as a reaction-diffusion term. By applying our new
memory-based diffusion to SRAD, we significantly reduced the
boundary broadening and edge dislocation effect and enhanced
the diffusion process itself. Experimental results showed that
the performance of our proposed memory-based scheme surpass
other diffusion filters like normal SRAD and Perona-Malik
filter as well as various adaptive linear de-noising filters.