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An exact and direct analytical method for the design of optimallyrobust CNN templates

机译:设计最佳鲁棒CNN模板的精确直接分析方法

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In this paper, we present an analytical design approach for the class of bipolar cellular neural networks (CNN's) which yields optimally robust template parameters. We give a rigorous definition of absolute and relative robustness and show that all well-defined CNN tasks are characterized by a finite set of linear and homogeneous inequalities. This system of inequalities can be analytically solved for the most robust template by simple matrix algebra. For the relative robustness of a task, a theoretical upper bound exists and is easily derived, whereas the absolute robustness can be arbitrarily increased by template scaling. A series of examples demonstrates the simplicity and broad applicability of the proposed method
机译:在本文中,我们为双极性细胞神经网络(CNN)类提供了一种分析设计方法,该方法可产生最佳鲁棒的模板参数。我们给出了绝对和相对鲁棒性的严格定义,并表明所有定义明确的CNN任务都具有一组有限的线性和齐次不等式。通过简单的矩阵代数,可以针对最鲁棒的模板来解析该不等式系统。对于任务的相对鲁棒性,存在一个理论上限并且可以轻松推导出,而可以通过模板缩放任意增加绝对鲁棒性。一系列示例说明了该方法的简单性和广泛的适用性

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