基于logistic gmdh型神经网络的医学图像识别

T. Kondo, A. Pandya
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引用次数: 2

摘要

本研究将logistic gmdh型神经网络应用于医学图像识别。该神经网络算法是在传统gmdh型神经网络的基础上,采用启发式自组织方法自动组织神经网络结构。在logistic gmdh型神经网络中,会产生大量与非线性系统复杂性拟合的输入变量的复杂非线性组合,只选择有用的输入变量组合来组织神经网络结构。因此,即使非线性系统的特征非常复杂,由logistic gmdh型神经网络组织的神经网络也具有良好的泛化能力。本研究将logistic gmdh型神经网络应用于医学图像识别,结果表明logistic gmdh型神经网络是一种准确、实用的医学图像识别方法。
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Medical image recognition by using logistic GMDH-type neural networks
In this study, the logistic GMDH-type neural networks are applied to the medical image recognition. This neural network algorithm is based on the conventional GMDH-type neural networks that can automatically organize neural network architecture by using the heuristic self-organization method. In the logistic GMDH-type neural networks, a lot of complex nonlinear combinations of the input variables fitting the complexity of the nonlinear system are generated and only useful combinations of the input variables are selected for organizing the neural network architecture. Therefore, the neural networks organized by the logistic GMDH-type neural networks have good generalization ability even if the characteristic of the nonlinear system is very complex. In this study, the logistic GMDH-type neural networks are applied to the medical image recognition and it is shown that the logistic GMDH-type neural networks are accurate and useful method for the medical image recognition.
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