Image Edge Detection based on ACO-PSO Algorithm

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

Keywords

Related Articles

Accuracy Based Feature Ranking Metric for Multi-Label Text Classification

In many application domains, such as machine learning, scene and video classification, data mining, medical diagnosis and machine vision, instances belong to more than one categories. Feature selection in single label te...

Feature Fusion: H-ELM based Learned Features and Hand-Crafted Features for Human Activity Recognition

Recognizing human activities is one of the main goals of human-centered intelligent systems. Smartphone sensors produce a continuous sequence of observations. These observations are noisy, unstructured and high dimension...

Towards Agile Implementation of Test Maturity Model Integration (TMMI) Level 2 using Scrum Practices

the software industry has invested the substantial effort to improve the quality of its products like ISO, CMMI and TMMI. Although applying of TMMI maturity criteria has a positive impact on product quality, test enginee...

Criminal Investigation EIDSS Based on Cooperative Mapping Mechanism

On purpose of improving the research in extension intelligence systems when the knowledge in hand is not sufficient, an intuition evidence model (IEM) based on human-computer cooperative is presented. From the initial in...

RASP-TMR: An Automatic and Fast Synthesizable Verilog Code Generator Tool for the Implementation and Evaluation of TMR Approach

Triple Modular Redundancy (TMR) technique is one of the most well-known techniques for error masking and Single Event Effects (SEE) protection for the FPGA designs. These FPGA designs are mostly expressed in hardware des...

Download PDF file
  • EP ID EP153402
  • DOI 10.14569/IJACSA.2015.060708
  • Views 104
  • Downloads 0

How To Cite

Chen Tao, Sun Xiankun, Han Hua, You Xiaoming (2015). Image Edge Detection based on ACO-PSO Algorithm. International Journal of Advanced Computer Science & Applications, 6(7), 47-54. https://europub.co.uk./articles/-A-153402