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Improved Methodof Fast Image Segmentation Based on Rough Sets and FCM

ZHANG Chao-quan,ZHOU Shao-jing2a,LIANG Ying2b   

  1. 1Faculty of Science,Jiangxi University of Science and Technology,Ganzhou341000,China;2aFaculty of Computer Information,2bHuman Resources Department,Kunming Metallurgy College,Kunming650033,China
  • Received:2015-04-03 Online:2015-07-01 Published:2015-07-01

Abstract:

In this paper,the competitivelearning neural network for reference,through the introduction of an inhibitory factor,to maximize the value of membership,the other corresponding decreases the value of membership,in order to achieve faster classification.As to highlight the main factorsand secondary factors,can inhibit the purpose.The improved method of rough set and fast image segmentation based on FCM was put forward.Experimental results show that the fast image segmentation method for image noise pollution has the better segmentation performance,rough set theoryhas a unique way of dealing with uncertain information,the ability to extract relevant information and easy integration of other intelligent methods.Rough set theory has a good application prospect in the field ofimage processing.

Key words: rough sets, image segmentation, fuzzy cluste

CLC Number: