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Pattern classification using a self-organizing neural network

机译:使用自组织神经网络进行模式分类

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A modified self-organizing neural network is presented. The network is based on a laterally inhibited neural network model developed by Kohonen (1988). Preliminary work is focused on the application of the neural model to the classification of feature vectors extracted from texture images. Results obtained from the self-organizing neural classifier are compared with the results of a feedforward neural network trained with the back-propagation algorithm as well as with those of a statistically based classifier.
机译:提出了修改的自组织神经网络。 该网络基于由Kohonen(1988)开发的横向抑制的神经网络模型。 初步工作专注于神经模型在从纹理图像中提取的特征向量分类中的应用。 将从自组织神经分类器获得的结果与用背部传播算法以及基于统计基于分类器的前馈神经网络的结果进行比较。

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