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Generalized morphological operators for noise reduction

机译:广义形态学算子用于降噪

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Based on a pair of structure elements which have the same size and the different shape, a novel type of generalized morphological operators is presented for the noise reduction. The operators can suppress noisy structures which are larger than structure elements while preserving edges and details in the image, and they inherit most of the properties of the classic morphological operators except the extensibility and anti-extensibility. Furthermore, the presented operators are less active compared with the classical morphology operators. The experimental results show that the generalized morphological operators can suppress noise efficiently while preserving the details in the image with higher peak signal-to-noise ratio and smaller root mean square error than many improved morphological operators.
机译:基于具有相同大小和不同形状的一对结构元素,提出了一种新型的广义形态学算子用于降噪。运算符可以抑制噪声大于结构元素的结构,同时保留图像中的边缘和细节,并且它们继承了经典形态运算符的大多数属性,除了可扩展性和抗扩展性。此外,与经典形态学算子相比,提出的算子不那么活跃。实验结果表明,与许多改进的形态学算子相比,广义形态学算子可以有效地抑制噪声,同时保留图像中的细节,具有更高的峰信噪比和均方根误差。

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