May 3, 2024
Saeed Karimi

Saeed Karimi

Academic Rank: Associate professor
Address:
Degree: Ph.D in Applied Mathematics
Phone: 07733447965
Faculty: Faculty of Intelligent Systems and Data Science

Research

Title
Iterative Solvers For image with diffusion models: A comparative study
Type Thesis
Keywords
نويززدايي، معادلە ي بازان، روش تكراري گراديان دومزدوج پايدار با شروع مجدد، الͽوريتم بهينە سازي فراابتكاري ازدحام ذرات
Researchers laila moteghi (Student) , Saeed Karimi (Primary advisor) , Hossein Hosseinzadeh (Advisor)

Abstract

In this thesis, we have done image denoising via Partial Differential Equations (PDEs) models, which is known as the Bazan equation (Bilateral-filter-based model). For this purpose, first we have discretized the equations with the Crank-Nicholson finite difference method and then compared the results of using several iterative solvers. The iterative methods used in this research were; Successive Over-Relaxation(SOR), Jacobi, Gauss-Seidel, Steepest Descent, Least Squares method and an advanced iterative method called Hybrid BiCGSTAB(l) method, which is the result of combining two iterative methods. Then, using the Particle Swarm meta-heuristic Optimization(PSO) algorithm, we optimized the solutions obtained from the BiCGSTAB(l) method as well as combination of the two BiCGSTAB(l) and the Successive Over-relaxation methods in image denoising. The obtained PSNR and SSIM values show better and more effective results in denoising and image improvement.