IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Intuitionistic Fuzzy Filters for Noise Removal in Images

Intuitionistic Fuzzy Filters for Noise Removal in Images
View Sample PDF
Author(s): C. Radhika (Vellallar College for Women, India), R. Parvathi (Vellallar College for Women, India)and N. Karthikeyani Visalakshi (Kongu Engineering College, India)
Copyright: 2017
Pages: 13
Source title: Biometrics: Concepts, Methodologies, Tools, and Applications
Source Author(s)/Editor(s): Information Resources Management Association (USA)
DOI: 10.4018/978-1-5225-0983-7.ch069

Purchase

View Intuitionistic Fuzzy Filters for Noise Removal in Images on the publisher's website for pricing and purchasing information.

Abstract

Image processing is any form of information processing in which both input and output are images. Most of the image processing involves in treating the image as two dimensional representations and applying standard techniques to it. Images contain lot of uncertainties and are fuzzy/vague in nature. Various fuzzy filtering techniques are defined for noise removal in image processing and these existing filters helps to enhance the image using only the membership values. Further, by incorporating intuitionistic fuzzy filters, vagueness and ambiguity are managed by taking the non-membership values also into consideration. In this paper, light is thrown on some important types of noise and a comparative analysis is done. This paper also presents the results of applying different noise types to an image and investigates the results of various intuitionistic fuzzy filtering techniques. A comparison is made on the results of all the techniques.

Related Content

Ajay Rawat, Shivani Gambhir. © 2017. 19 pages.
Abhijit Chandra, Srideep Maity. © 2017. 15 pages.
Swanirbhar Majumder, Saurabh Pal. © 2017. 26 pages.
Fouad Farouk Jabri. © 2017. 32 pages.
Francisco Pacheco Andrade, Teresa Coelho Moreira. © 2017. 13 pages.
Swanirbhar Majumder, Smita Majumder. © 2017. 31 pages.
Yuanfang Guo, Oscar C. Au, Ketan Tang. © 2017. 20 pages.
Body Bottom