On stability of full range and polynomial type CNNs

F. Corinto, M. Gilli, P. Civalleri
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引用次数: 16

Abstract

Cellular neural networks (CNNs) are analog dynamic processors that have found several applications for the solution of complex computational problems. The mathematical model of a CNN consists in a large set of coupled nonlinear differential equations that have been mainly studied through numerical simulations; the knowledge of the dynamic behavior is essential for developing rigorous design methods and for establishing new applications. In most applications (such as image processing tasks) it is required that the CNN be stable, i.e. that after a transient all the trajectories tend to a constant value (with at most the exception of a set of measure zero). So far, three main CNN models have been proposed: the original Chua-Yang model, the full range model, that was exploited for VLSI implementation and the polynomial type model, which presents polynomial interactions among the cells. This manuscript is devoted to the study of the stability properties of polynomial type CNNs and to the comparison of such properties with those of Chua-Yang and of full range models.
全范围和多项式型cnn的稳定性
细胞神经网络(cnn)是一种模拟动态处理器,在解决复杂的计算问题方面已经有了一些应用。CNN的数学模型是由一大组耦合的非线性微分方程组成的,这些方程主要是通过数值模拟来研究的;动态行为的知识对于开发严格的设计方法和建立新的应用是必不可少的。在大多数应用(如图像处理任务)中,要求CNN是稳定的,即在瞬态之后,所有的轨迹都趋向于一个恒定值(除了一组测量值为零的情况)。到目前为止,已经提出了三种主要的CNN模型:原始的Chua-Yang模型,用于VLSI实现的全范围模型和多项式型模型,该模型表示单元之间的多项式相互作用。本文研究了多项式型cnn的稳定性,并将其与Chua-Yang模型和全范围模型的稳定性进行了比较。
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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