单调二值细胞神经网络的设计

I. Fajfar, F. Bratkovic
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引用次数: 20

摘要

为了能够充分利用细胞神经网络(cnn)的巨大应用潜力,我们也需要有成功的设计和学习技术。在几乎所有执行图像处理任务的类比CNN算法中,二进制CNN都扮演着重要的角色。我们观察到,在文献中报道的所有二进制cnn,除了一个连接的成分检测器,表现出单调的动态。本文证明了单调二元CNN的局部稳定性是其泛函性的充分条件,即所有初始状态收敛于规定的全局稳定平衡点。基于这一发现,我们提出了一种严格的设计方法,它以线性等式的形式产生一组设计约束。这些是由类似于初级元胞自动机的简单局部规则获得的,而不必担心CNN的连续动态。最后,我们利用我们的方法设计了一个新的CNN模板,用于检测二维物体中的孔。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design of monotonic binary-valued cellular neural networks
In order to be able to take full advantage of the great application potential that lies in cellular neural networks (CNNs) we need to have successful design and learning techniques as well. In almost any analogic CNN algorithm that performs an image processing task, binary CNNs play an important role. We observed that all binary CNNs reported in the literature, except for a connected component detector, exhibit monotonic dynamics. In the paper we show that the local stability of a monotonic binary CNN represents sufficient condition for its functionality, i.e. convergence of all initial states to the prescribed global stable equilibria. Based on this finding, we propose a rigorous design method, which results in a set of design constraints in a form of linear equalities. These are obtained from a simple local rules similar to that in elementary cellular automata without having to worry about continuous dynamics of a CNN. In the end we utilize our method to design a new CNN template for detecting holes in a 2D object.
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