具有输入依赖初始状态的阈值类cnn

I. Genç, C. Guzelis
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引用次数: 1

摘要

本文介绍了一类特殊的细胞神经网络(cnn),其中细胞是解耦的,并根据它们的加权输入水平进行初始化。在双极输出模式下工作的非耦合CNN单元定义了一个离散值感知器,其阈值由初始条件决定。不耦合单元的cnn称为线性阈值类cnn,可以通过感知器学习规则在线性可分输入情况下搜索最优模板值进行训练。然而,与感知器一样,传统的线性阈值类cnn不能对线性不可分输入情况进行分类。然而,与感知器一样,传统的线性阈值类CNN不能对线性不可分输入集进行分类。为了克服这个问题,我们选择考虑的cnn的初始状态作为外部输入的分段常数函数,以便一个单元定义一个具有输入依赖阈值的修改感知器。我们证明了这种线性阈值类cnn可以执行一些线性不可分的阈值函数。边缘检测问题的实验结果证明了我们的设计方法是正确的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Threshold class CNNs with input-dependent initial state
This paper introduces a special class of cellular neural networks (CNNs) where cells are uncoupled and they are initialized depending on their weighted input level. An uncoupled CNN cell operating in the bipolar output mode defines a discrete-valued perceptron whose threshold is determined by the initial condition. CNNs of uncoupled cells, so called linear threshold class CNNs, can be trained by perceptron learning rule for searching optimum template values in linearly separable input cases. However, just like perceptron, conventional linear threshold class CNNs can not perform the classification of linearly nonseparable input cases. However, just like perceptron, conventional linear threshold class CNN cannot perform the classification of linearly nonseparable input sets. To overcome this problem, we choose the initial states of the considered CNNs as piecewise constant functions of the external inputs so that a cell defines a modified perceptron having an input-dependent threshold. We show that such linear threshold class CNNs can perform some linearly nonseparable threshold functions. The results obtained by the experiments done on edge detection problem justify our design method.
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