noisy images edge detection: ant colony optimization algorithm

Authors

z. dorrani

m.s. mahmoodi

abstract

the edges of an image define the image boundary. when the image is noisy, it does not become easy to identify the edges. therefore, a method requests to be developed that can identify edges clearly in a noisy image. many methods have been proposed earlier using filters, transforms and wavelets with ant colony optimization (aco) that detect edges. we here used aco for edge detection of noisy images with gaussian noise and salt and pepper noise. as the image edge frequencies are close to the noise frequency band, the edge detection using the conventional edge detection methods is challenging. the movement of ants depends on local discrepancy of image’s intensity value. the simulation results compared with existing conventional methods and are provided to support the superior performance of aco algorithm in noisy images edge detection. canny, sobel and prewitt operator have thick, non continuous edges and with less clear image content. but the applied method gives thin and clear edges.

Upgrade to premium to download articles

Sign up to access the full text

Already have an account?login

similar resources

Noisy images edge detection: Ant colony optimization algorithm

The edges of an image define the image boundary. When the image is noisy, it does not become easy to identify the edges. Therefore, a method requests to be developed that can identify edges clearly in a noisy image. Many methods have been proposed earlier using filters, transforms and wavelets with Ant colony optimization (ACO) that detect edges. We here used ACO for edge detection of noisy ima...

full text

Image Edge Detection Based on Ant Colony Optimization Algorithm

No part of this journal may be reproduced or used in any form or by any means without written permission from the publisher, except for noncommercial, educational use including classroom teaching purposes. Product or company names used in this journal are for identification purposes only. Inclusion of the names of the products or companies does not indicate a claim of ownership by IGI Global of...

full text

Ant Colony Optimization Algorithm

Hybrid algorithm is proposed to solve combinatorial optimization problem by using Ant Colony and Genetic programming algorithms. Evolutionary process of Ant Colony Optimization algorithm adapts genetic operations to enhance ant movement towards solution state. The algorithm converges to the optimal final solution, by accumulating the most effective sub-solutions.

full text

Image Edge Detection Using Quantum Ant Colony Optimization

Ant colony optimization algorithm (ACO) which performs well in discrete optimization has already been used widely and successfully in digital image processing. Slow convergence, however, is an obvious drawback of the traditional ACO. A quantum ant colony algorithm (QACO), based on the concept and principles of quantum computing can overcome this defect. In this study, a QACO-based edge detectio...

full text

Improved Ant Colony Optimization Based Low-Contrast Edge Detection

An algorithm for edge detection with low contrast image using improved ant colony optimization is proposed in this paper. In edge detection, some parts of the edge are disappeared or disconnected because of low contrast in their intensities. This paper concentrates to this low-contrast problem. To detect these pixels, the direction tendency of edge lines is computed and ant colony optimization ...

full text

Adaptive Edge Detection Using Adjusted Ant Colony Optimization

Edges contain important information in image and edge detection can be considered a low level process in image processing. Among different methods developed for this purpose traditional methods are simple and rather efficient. In Swarm Intelligent methods developed in last decade, ACO is more capable in this process. This paper uses traditional edge detection operators such as Sobel and Canny a...

full text

My Resources

Save resource for easier access later


Journal title:
journal of ai and data mining

Publisher: shahrood university of technology

ISSN 2322-5211

volume 4

issue 1 2016

Hosted on Doprax cloud platform doprax.com

copyright © 2015-2023