Image Edge Detection based on ACO-PSO Algorithm
Journal Title: International Journal of Advanced Computer Science & Applications - Year 2015, Vol 6, Issue 7
Abstract
This survey focuses on the problem of parameters selection in image edge detection by ant colony optimization (ACO) algorithm. By introducing particle swarm optimization (PSO) algorithm to optimize parameters in ACO algorithm, the fitness function based on connectivity of image edge is proposed to evaluate the quality of parameters in ACO algorithm. And the ACO-PSO algorithm is applied to image edge detection. The simulation results show that the parameters have been optimized and the proposed ACO-PSO algorithm presents better edges than traditional methods.
Authors and Affiliations
Chen Tao, Sun Xiankun, Han Hua, You Xiaoming
Virtual Heterogeneous Model Integration Layer
The classic way of building a software today sim-plistically consists in connecting a piece of code calling a method with the piece of code implementing that method. We consider these piece of code (software systems) not...
Experimental Results on Agent-Based Indoor Localization using WiFi Signaling
This paper discusses experimental results on the possibility of accurately estimating the position of smart devices in known indoor environments using agent technology. Discussed localization approaches are based on WiFi...
Performance Evaluation of Anti-Collision Algorithms for RFID System with Different Delay Requirements
The main purpose of Radio-frequency identification (RFID) implementation is to keep track of the tagged items. The basic components of an RFID system include tags and readers. Tags communicate with the reader through a s...
Probabilistic Monte-Carlo Method for Modelling and Prediction of Electronics Component Life
Power electronics are widely used in electric vehicles, railway locomotive and new generation aircrafts. Reliability of these components directly affect the reliability and performance of these vehicular platforms. In re...
Tele-Ophthalmology Android Application: Design and Implementation
Diabetic retinopathy is the leading cause of blind-ness in the world population. Early detection and appropriate treatment can significantly reduce the risk of loss of sight. Medical authorities recommend an annual revie...