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One-shot Training of Polynomial Cellular Neural Networks and applications in image processing

机译:多项式细胞神经网络的一次训练及其在图像处理中的应用

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The Polynomial Cellular Neural Network (PCNN) is a fully parallel, scalable, non-linear processor that uses polynomial terms to solve non-linear problems in a lattice fashion. The parallel nature of such processor allows every neuron (or cell) to gather information from the nearby neurons and independently process the retrieved values by employing non-linear functions and synaptic weights. Nonetheless, one of the main challenges of the PCNN is the determination of the synaptic weights in order to achieve the desired behavior. In this paper, a new training method is presented, based on two fundamental concepts: the root location training method and the polynomial surfaces. The proposed training method is able to straightforwardly determine the requested synaptic weights for any outer-totallistic cellular automata behavior. In order to deliver a proof of the potential of such proposition, several image processing tasks are performed with a single layered PCNN.
机译:多项式细胞神经网络(PCNN)是一种完全并行,可扩展的非线性处理器,它使用多项式项以晶格方式解决非线性问题。这种处理器的并行性质允许每个神经元(或细胞)从附近的神经元中收集信息,并通过采用非线性函数和突触权重来独立处理检索到的值。尽管如此,PCNN的主要挑战之一是确定突触权重以实现所需的行为。本文基于两个基本概念,提出了一种新的训练方法:根位置训练方法和多项式曲面。所提出的训练方法能够直接确定任何外部语言细胞自动机行为所要求的突触权重。为了提供这种提议的潜力的证明,利用单层PCNN执行了多个图像处理任务。

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