i need matlab code for an iterative image enhancement with fuzzy
thanks a lot
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Although image restoration methods based on spectral filtering techniques are very efficient, they can only be applied to problems with relatively simple spatially invariant diffusion operators. Iterative methods, however, are much more flexible; They may be very effective for spatially invariant blurs as well as spatial variants, they may incorporate a variety of regularization techniques and boundary conditions, and may more easily incorporate additional constraints, such as non-negativity. This chapter describes a variety of iterative methods used in image restoration, with a particular emphasis on efficiency, convergence behavior, and implementation. A discussion of the MATLAB software implementing the methods is also provided.
Iterative image restoration algorithms have many advantages over simple filtering techniques. Iterative methods may be very effective for spatially invariant and spatially variant blurs, may incorporate a variety of regularization techniques and boundary conditions, and may more readily incorporate additional constraints, such as non-negativity. The cost of an iterative scheme depends on the amount of computation required per iteration, as well as the number of iterations necessary to achieve a good restoration of the image. Convergence can be accelerated using preconditioning, but if not done carefully, can lead to erratic convergence behavior resulting in a rapid convergence to a poor approximate solution. In this chapter we describe a variety of iterative methods that can be used for image restoration, and we also describe some preconditioning techniques that can be used to accelerate convergence. We show that many well-known iterative methods can be seen as a basic method with a particular preconditioner. This view provides a natural mechanism for comparing a variety of iterative methods.