A Discrete Particle Swarm Optimization to Estimate Parameters in Vision Tasks

Abstract

The majority of manufacturers demand increasingly powerful vision systems for quality control. To have good outcomes, the installation requires an effort in the vision system tuning, for both hardware and software. As time and accuracy are important, actors are oriented to automate parameter’s adjustment optimization at least in image processing. This paper suggests an approach based on discrete particle swarm optimization (DPSO) that automates software setting and provides optimal parameters for industrial vision applications. A novel update functions for our DPSO definition are suggested. The proposed method is applied on some real examples of quality control to validate its feasibility and efficiency, which shows that the new DPSO model furnishes promising results.

Authors and Affiliations

Benchikhi Loubna, Sadgal Mohamed, Elfazziki Abdelaziz, Mansouri Fatimaezzahra

Keywords

Related Articles

Smart Building’s Elevator with Intelligent Control Algorithm based on Bayesian Networks

Implementation of the intelligent elevator control systems based on machine-learning algorithms should play an important role in our effort to improve the sustainability and convenience of multi-floor buildings. Traditio...

Planning And Allocation of Tasks in a Multiprocessor System as a Multi-Objective Problem and its Resolution Using Evolutionary Programming

The use of Linux-based clusters is a strategy for the development of multiprocessor systems. These types of systems face the problem of efficiently executing the planning and allocation of tasks, for the efficient use of...

Permanent Relocation and Self-Route Recovery in Wireless Sensor and Actor Networks

Wireless sensor and actor network’s connectivity and coverage plays a significant role in mission-critical applications, whereas sensors and actors respond immediately to the detected events in an organized and coordinat...

PRIVACY-PRESERVING CLUSTERING USING REPRESENTATIVES OVER ARBITRARILY PARTITIONED DATA

The challenge in privacy-preserving data mining is avoiding the invasion of personal data privacy. Secure computa- tion provides a solution to this problem. With the development of this technique, fully homomorphic encry...

Evaluating Web Accessibility Metrics for Jordanian Universities

University web portals are considered one of the main access gateways for universities. Typically, they have a large candidate audience among the current students, employees, and faculty members aside from previous and f...

Download PDF file
  • EP ID EP128115
  • DOI 10.14569/IJACSA.2016.070128
  • Views 97
  • Downloads 0

How To Cite

Benchikhi Loubna, Sadgal Mohamed, Elfazziki Abdelaziz, Mansouri Fatimaezzahra (2016). A Discrete Particle Swarm Optimization to Estimate Parameters in Vision Tasks. International Journal of Advanced Computer Science & Applications, 7(1), 196-207. https://europub.co.uk/articles/-A-128115