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Fuzzy stack filters-their definitions, fundamental properties, and application in image processing

机译:模糊堆栈过滤器-它们的定义,基本属性以及在图像处理中的应用

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A new fuzzy filter, called fuzzy stack filter (FSF), is proposed to extend the filtering capability of conventional stack filter (SF), which is based on the positive Boolean function (PBF) as its window operator. We fuzzify the onset and off-set of a given PBF to obtain two types of fuzzy PBFs. Then, we adopt the architecture of threshold decomposition to develop this new fuzzy filter with a fuzzy PBF as its window operator. Each fuzzy PBF is associated with a set of control parameters. Therefore, the original PBF can be estimated from above and below by two fuzzy PBFs with appropriate control parameters. Furthermore, we can apply the fuzzy modifiers to modify the fuzzy PBFs such that the PBFs can be completely estimated by the fuzzy PBFs. Hence, the stack filter is a special case of fuzzy stack filter. Since some control parameters are added in this new filter, the neural learning algorithms can be easily developed under the flexibility of the given control parameters. We first propose the fuzzy (m,n) rank-order filter to test our proposed learning algorithm. In this simple learning algorithm, we can remove the noise-corrupted images very well in contrast to the filtering behavior of rank-order filters. We believe that the results presented will lead to more fruitful research on more advanced and powerful learning algorithms dedicated to the appropriate applications.
机译:提出了一种新的模糊过滤器,称为模糊堆栈过滤器(FSF),以扩展常规堆栈过滤器(SF)的过滤能力,该过滤器基于正布尔函数(PBF)作为其窗算子。我们模糊给定PBF的开始和偏移以获得两种类型的模糊PBF。然后,我们采用阈值分解的架构来开发这种以模糊PBF为窗口运算符的模糊滤波器。每个模糊PBF与一组控制参数关联。因此,可以通过具有适当控制参数的两个模糊PBF从上下估算原始PBF。此外,我们可以应用模糊修饰符来修改模糊PBF,以便可以通过模糊PBF完全估计PBF。因此,堆栈过滤器是模糊堆栈过滤器的特例。由于在此新过滤器中添加了一些控制参数,因此可以在给定控制参数的灵活性下轻松开发神经学习算法。我们首先提出模糊(m,n)等级滤波器来测试我们提出的学习算法。在这种简单的学习算法中,与秩过滤器的过滤行为相比,我们可以很好地去除受噪声破坏的图像。我们相信,提出的结果将导致针对专用应用程序的更高级,更强大的学习算法的研究成果丰硕。

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