CNN with non-integer order cells

P. Arena, L. Bertucco, L. Fortuna, G. Nunnari, L. Occhipinti, D. Porto
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引用次数: 5

Abstract

A new kind of cellular neural network (CNN) is introduced. Its feature consists of a state representation using q-order derivatives, with q being a non-integer quantity. This approach can be considered as a generalisation of the traditional CNN model, which is obtained from the one presented in the paper as a particular case setting q=1. It is shown that this more general CNN structure exhibits suitable performance in terms of processing speed. Various examples are reported to show the suitability of non-integer order CNNs.
非整数阶单元的CNN
介绍了一种新的细胞神经网络(CNN)。它的特征由q阶导数的状态表示组成,其中q是一个非整数。这种方法可以被认为是传统CNN模型的推广,传统CNN模型是由本文中作为特定情况设置q=1的模型得到的。结果表明,这种更通用的CNN结构在处理速度方面表现出合适的性能。通过各种实例证明了非整数阶cnn的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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