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Straightforward design of robust cellular neural networks for image processing

机译:用于图像处理的强大蜂窝神经网络的直接设计

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The analytical design of Cellular Neural Networks (CNNs) templates for image processing often goes through the resolution of pixel level analytical rule-based task descriptions involving ideal CNN models. Due to non-ideal analog implementations of CNNs, recent issues have addressed the template robustness in order to achieve fault-tolerant processing. However, besides their efficiency and usefulness for the definition of coupled operators, rule-based approaches can make CNN templates design appear to be an intricate art reserved for initiated CNNs specialists rather than for image processing scientists. An alternative straightforward analytical design method for uncoupled CNNs, which is until now the only unified approach to the design of both gray and binary output operators, has already been presented, and is now extended to the design of robust binary operators.
机译:用于图像处理的蜂窝神经网络(CNNS)模板的分析设计经常通过涉及理想CNN模型的基于像素级分析规则的任务描述的分辨率来实现。由于CNN的非理想模拟实现,最近的问题已经解决了模板稳健性,以实现容错处理。然而,除了他们对耦合运营商定义的效率和有用性之外,基于规则的方法可以使CNN模板设计似乎是为启动的CNNS专家保留的复杂艺术而不是图像处理科学家。用于未耦合CNN的替代直接分析设计方法,直到现在唯一统一的灰色和二进制输出运算符的唯一统一方法,现在延伸到强大的二进制运算符的设计。

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