Edge detection in digital images using Ant Colony Optimization
Închide
Conţinutul numărului revistei
Articolul precedent
Articolul urmator
753 11
Ultima descărcare din IBN:
2023-09-13 11:22
Căutarea după subiecte
similare conform CZU
519.677:004.932 (1)
Matematică computațională. Analiză numerică. Programarea calculatoarelor (123)
Informatică aplicată. Tehnici bazate pe calculator cu aplicații practice (438)
SM ISO690:2012
RAFSANJANI, MarjanKuchaki, VARZANEH, ZahraAsghari. Edge detection in digital images using Ant Colony Optimization . In: Computer Science Journal of Moldova, 2015, nr. 3(69), pp. 343-359. ISSN 1561-4042.
EXPORT metadate:
Google Scholar
Crossref
CERIF

DataCite
Dublin Core
Computer Science Journal of Moldova
Numărul 3(69) / 2015 / ISSN 1561-4042 /ISSNe 2587-4330

Edge detection in digital images using Ant Colony Optimization
CZU: 519.677:004.932

Pag. 343-359

Rafsanjani MarjanKuchaki, Varzaneh ZahraAsghari
 
Shahid Bahonar University of Kerman
 
 
Disponibil în IBN: 26 noiembrie 2015


Rezumat

Ant Colony Optimization (ACO) is an optimization algorithm inspired by the behavior of real ant colonies to approximate the solutions of difficult optimization problems. In this paper, ACO is introduced to tackle the image edge detection problem. The proposed approach is based on the distribution of ants on an image; ants try to find possible edges by using a state transition function. Experimental results show that the proposed method compared to standard edge detectors is less sensitive to Gaussian noise and gives finer details and thinner edges when compared to earlier ant-based approaches.

Cuvinte-cheie
Ant Colony Optimization (ACO), Digital image processing, Noisy images,

Edge detection