>
Fa   |   Ar   |   En
   FPGA DESIGN OF PSO-KMEANS HYBRID ALGORITHM FOR IMAGE COLORS REDUCTION  
   
نویسنده Assar Khairy M. ,Rashid Ali ,Zaki M. ,Ashour I. S.
منبع journal of al azhar university engineering sector - 2010 - دوره : 5 - شماره : 14 - صفحه:127 -139
چکیده    Data clustering is a popular approach for automatically finding set of objects into a specific number of clusters. clustering is largely used in many fields including text mining, information retrieval and groups of patterns. particle swarm optimization (pso) is a population-based optimization algorithm modeled after the simulation of social behavior of bird flocks and widely used for optimize problem solving. in clustering problem pso gives optimal solution but takes long time (so called iterations) to find the optimum solution. the hybrid pso and k-means algorithm is developed to automatically detect the cluster centers of geometrical structure data sets. the proposed algorithm gives the benefits for each of two-merged algorithm. k-means is fast algorithm. pso optimize the solution. the implementation of the hybrid k-means pso structure is realized in hardware. the clustering based on hybrid k-means pso architecture is described by different technique for hardware description (i.e. vhdi,, schematic diagram) and implemented on field programmable gate array (fpga). its feasibility is verified by experiments. results show that the proposed architecture implemented on the fpga has a good clustering technique especially for test with color reduction for true colored images.
کلیدواژه Clustering ,K-means ,Color image reduction ,Particle Swarm Optimization (PSO) ,and field programmable gate array (FPGA).
آدرس Al-Azhar University, Computers and Systems Engineering, Egypt, Al-Azhar University, Computers and Systems Engineering, Egypt, Al-Azhar University, Computers and Systems Engineering, Egypt, National Telecommunication Institute, Egypt
 
     
   
Authors
  
 
 

Copyright 2023
Islamic World Science Citation Center
All Rights Reserved