Classification of Magnetic Resonance Imagery Using Deterministic Relaxation of Neural Network.
- Author:
Jun Chul CHUN
1
;
Kyong Pil MIN
;
Soo Il KWON
Author Information
1. Department of Computer Science, Kyonggi University, Korea. jcchun@kuic.kyonggi.ac.kr
- Publication Type:Original Article
- Keywords:
Classification;
Deterministic Relaxation;
Neural network
- MeSH:
Classification*;
Magnetic Resonance Imaging;
Relaxation*
- From:Journal of the Korean Society of Magnetic Resonance in Medicine
2002;6(2):137-146
- CountryRepublic of Korea
- Language:Korean
-
Abstract:
PURPOSE: This paper introduces an improved classification approach which adopts a deterministic relaxation method and an agglomerative clustering technique for the classification of MRI using neural network. The proposed approach can solve the problems of convergency to local optima and computational burden caused by a large number of input patterns when a neural network is used for image classification. MATERIALS AND METHODS: Application of Hopfield neural network has been solving various optimization problems. However, major problem of mapping an image classification problem into a neural network is that network is opt to converge to local optima and its convergency toward the global solution with a standard stochastic relaxation spends much time. Therefore, to avoid local solutions and to achieve fast convergency toward a global optimization, we adopt MFA to a Hopfield network during the classification. MFA replaces the stochastic nature of simulated annealing method with a set of deterministic update rules that act on the average value of the variable. By minimizing averages, it is possible to converge to an equilibrium state considerably faster than standard simulated annealing method. Moreover, the proposed agglomerative clustering algorithm which determines the underlying clusters of the image provides initial input values of Hopfield neural network. RESULTS: The proposed approach which uses agglomerative clustering and deterministic relaxation approach resolves the problem of local optimization and achieves fast convergency toward a global optimization when a neural network is used for MRI classification. CONCLUSION: In this paper, we introduce a new paradigm to classify MRI using clustering analysis and deterministic relaxation for neural network to improve the classification results.