Segmentation of MR and CT Images Using a Hybrid Neural Network Trained by Genetic Algorithms

作者:Zümray Dokur

摘要

A novel hybrid neural network trained by the genetic algorithms is presented. Genetic algorithms are used to improve the neural net's classification performance while minimizing the number of nodes. Each node of the network forms a closed region in the input space. The closed regions, which are formed by the nodes, intersect each other. The performance of the proposed hybrid neural network is compared with the multilayer perceptron, and the restricted Coulomb energy network for the segmentation of MR and CT head images. Experimental results show that the proposed neural network gives the best classification performance with a small number of nodes in short training times.

论文关键词:genetic algorithms, neural networks, segmentation of MR and CT images

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论文官网地址:https://doi.org/10.1023/A:1021769530941