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Image segmentation algorithm based on neutrosophic fuzzy clustering with non-local information

机译:非局部信息的基于中智模糊聚类的图像分割算法

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摘要

To improve the boundary processing ability and anti-noise performance of image segmentation algorithm?a neutrosophic fuzzy clustering algorithm based on non-local information is proposed here. Initially, the proposed approach uses the data distribution of deterministic subset to determine the clustering centre of the fuzzy subset. Besides, the fuzzy non-local pixel correlation is introduced into the neutrosophic fuzzy mean clustering algorithm. The experimental results on synthetic images, medical images and natural images show that the proposed method is more robust and more accurate than the existing clustering segmentation methods.
机译:为了提高图像分割算法的边界处理能力和抗噪性能,提出了一种基于非局部信息的中智模糊聚类算法。最初,所提出的方法使用确定性子集的数据分布来确定模糊子集的聚类中心。此外,将模糊非局部像素相关性引入到中智模糊均值聚类算法中。在合成图像,医学图像和自然图像上的实验结果表明,所提出的方法比现有的聚类分割方法更健壮,更准确。

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