基于纹理的一维二元元胞自动机动态自动分类

Marcelo Arbori Nogueira, P. D. Oliveira
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引用次数: 0

摘要

元胞自动机由于规则和初始配置的数量而在时间演化中表现出很大的可变性。对其动态行为进行自动分类的可能性对其动力学性质的研究具有重要的价值。通过计算基本元胞自动机,并考虑其时间演化为二值图像,作者创建了图像的纹理描述符-基于细胞在时间演化中的邻域配置-因此它可以与每个动态行为类相关联,遵循Wolfram的经典分类方案。在精度和计算成本方面,用一种比文献中其他方法更有效的方法来预测基本规则的时间演化的规则类是可能的。通过将分类器应用于包含4个单元格的较大邻域空间,准确率下降到刚刚超过70%。然而,分类器仍然能够以更低的计算成本提供一些关于未知更大空间的动态信息。
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Automatic Texture Based Classification of the Dynamics of One-Dimensional Binary Cellular Automata
Cellular automata present great variability in their temporal evolutions due to the number of rules and initial configurations. The possibility of automatically classifying its dynamic behavior would be of great value when studying properties of its dynamics. By counting on elementary cellular automata, and considering its temporal evolution as binary images, the authors created a texture descriptor of the images - based on the neighborhood configurations of the cells in temporal evolutions - so that it could be associated to each dynamic behavior class, following the scheme of Wolfram's classic classification. It was then possible to predict the class of rules of a temporal evolution of an elementary rule in a more effective way than others in the literature in terms of precision and computational cost. By applying the classifier to the larger neighborhood space containing 4 cells, accuracy decreased to just over 70%. However, the classifier is still able to provide some information about the dynamics of an unknown larger space with reduced computational cost.
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