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首页> 外文期刊>International journal of bifurcation and chaos in applied sciences and engineering >Nonlinear pattern classification associated with cellular neural networks-based dynamic programming
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Nonlinear pattern classification associated with cellular neural networks-based dynamic programming

机译:与基于细胞神经网络的动态规划相关的非线性模式分类

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摘要

A Cellular Neural Networks (CNN)-based nonlinear pattern classification algorithm utilizing the most likely path-finding feature of dynamic programming is proposed. Dynamic programming for the most likely path-finding algorithm can be implemented with CNN. If exemplars and test patterns are assigned as the goals and the start positions, respectively for our CNN-based dynamic programming, the paths from the test patterns to their closest exemplars are found with the optimality feature of CNN-based dynamic programming. Such paths are utilized as aggregating keys for classification. Our algorithm is suitable for patterns with nonlinear pattern boundaries. Simulation results are included.
机译:提出了一种基于细胞神经网络(CNN)的非线性模式分类算法,该算法利用了动态规划中最可能的寻路特性。可以使用CNN实施最可能的寻路算法的动态编程。如果将样例和测试模式分别指定为基于CNN的动态规划的目标和起始位置,则会发现具有基于CNN的动态规划的最佳功能,从而找到从测试模式到最接近的示例的路径。这样的路径被用作用于分类的聚集关键字。我们的算法适用于具有非线性图案边界的图案。包括仿真结果。

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