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Two-Level Complex-Valued Hopfield Neural Networks

机译:两级复合价值霍夫菲尔德神经网络

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摘要

In multistate neural associative memories, some neurons have small noise and the others have large noise. If we know which neurons have small noise, the noise tolerance could be improved. In this brief, we provide a novel method to reinforce neurons with small noise and apply our new method to images with the Gaussian noise. A complex-valued multistate neuron is decomposed to two neurons, referred to as high and low neurons. For the Gaussian noise, the high neurons are expected to have small noise. The noise tolerance is improved by reinforcement of high neurons. The computer simulations support the efficiency of reinforced neurons.
机译:在多态神经关联记忆中,一些神经元有很小的噪音,其他神经元有很大的噪音。 如果我们知道哪个神经元有较小的噪音,则可以提高噪声容差。 在此简介中,我们提供一种新的方法来强化具有小噪声的神经元,并将新方法应用于具有高斯噪声的图像。 复合值的多体神经元分解为两个神经元,称为高和低神经元。 对于高斯噪音,高尼神经元预期具有小的噪音。 通过加强高神经元改善了噪声容差。 计算机模拟支持增强神经元的效率。

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