Abstract

This paper uses partial differential equation image processing techniques to establish image texture analysis models based on nonlinear anisotropic diffusion equations for image denoising, image segmentation, and image decomposition. This paper proposes a class of denoising models based on the hybrid anisotropic diffusion equation from the characteristics of different noise types. The model exhibits anisotropic diffusion near the image boundary, which can protect the boundary well, and isotropic diffusion inside the image; so, it can remove the noise effectively. We use the immovable point theory to prove the uniqueness of the model solution and further discuss other properties such as asymptotics of the solution. We propose a class of image texture analysis algorithms based on anisotropic diffusion equations and discrete gray level sets. First, a class of nonconvex generalized functions is proposed to remove the noise from the original image to obtain a smooth image while sharpening the edges. Then, an energy generalization function based on the gray level set is proposed, and the existence of the global minimum of this energy generalization function is discussed. Finally, an equivalent form of this energy generalization is given in the discrete case, and an image texture analysis algorithm is designed based on the equivalent form. The algorithm is improved by initial position optimization, dynamic adjustment of parameters, and adaptive selection of thresholds so that the ants can search along the real edges. Experiments show that the improved algorithm for image edge detection can obtain more complete edges and better detection results. The energy generalization function is calculated directly on the discrete gray level set instead of solving the corresponding partial differential equation, which can avoid the selection of the initial level set and the reinitialization of the level set, thus greatly improving the segmentation efficiency. The new algorithm has a high improvement in segmentation efficiency and can efficiently handle large size complex images.

Highlights

  • In the process of processing digital images, the images obtained in practice are subject to many contaminants and image noise, due to the current state of technology

  • This paper proposes an efficient image denoising model based on nonlinear diffusion equation

  • The results of image texture classification experiments demonstrate that the rotation-invariant property has been included in our extracted anisotropic diffusion equation image texture features, and such a combination of features improves the recognition ability based on transform domain features

Read more

Summary

Introduction

In the process of processing digital images, the images obtained in practice are subject to many contaminants and image noise, due to the current state of technology. Mathematicians try to remodel existing image processing problems with strict mathematical theories, classify existing image processing algorithms, and improve image processing models at the level of mathematical theory Among these mathematical theories, partial differential equations with mature systems have become a natural choice [3]. Based on the many advantages of partial differential equations for image processing, this paper uses anisotropic diffusion equations (sets) to establish a series of image denoising, image segmentation, and image decomposition models [6]. The study of image texture analysis and edge detection based on an anisotropic diffusion equation is presented. Chapter four analyzes the image texture analysis and the image edge detection algorithm and proves that the research method in this paper has better performance and effectiveness. Chapter five summarizes and reviews the research contents of this paper, explains the areas that still need improvement in the research process, and points out the direction for future research work

Related Work
Analysis of Results
Evaluation index MSE
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call