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Non Linear Cellular Automata Enhanced with Active Learning for Pattern Classification in Highly Dense Images

机译:主动学习增强的非线性细胞自动机用于高密度图像中的模式分类

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This paper introduces a new approach to classify several high density images based on the properties of Non Linear Cellular Automata. We use a state-transition which consists of a set of disjoint trees rooted at cyclic states of unit cycle length thus forming a natural classifier. The framework proposed is strengthened with genetic algorithm to find the desired local rule of the modeling as a global state function.
机译:本文介绍了一种基于非线性细胞自动机的属性对几种高密度图像进行分类的新方法。我们使用状态转换,该状态转换由一组以单元周期长度的循环状态为根的不相交的树组成,从而形成自然的分类器。提出的框架通过遗传算法得到加强,以找到所需的建模局部规则作为全局状态函数。

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