Image Recognition Based on Chaotic-Particle Swarm-Optimization-Neural Network Algorithm

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Abstract:

A novel image recognition method based on chaotic-particle swarm-optimization-neural network algorithm was presented. The chaotic mapping mechanism and particle swarm algorithm were used to optimize the weight and threshold of BP neural network which was applied to the recognition of image. The simulation results show this new method can overcome the problems that BP neural network is easy to fall into local optimum and sensitive to the initial value, and has better recognition rate and stronger robustness.

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Advanced Materials Research (Volumes 655-657)

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969-973

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January 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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