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An improved KFCM algorithm for unsupervised image segmentation based on neighborhood constraints

机译:基于邻域约束的无监督图像分割改进的KFCM算法

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Fuzzy clustering has been widely applied in the field of image segmentation, but it is sensitive for the noise in image. To solve this problem an unsupervised image segmentation improvement scheme combining neighborhood spatial constraints is proposed in this paper. The objective function of traditional fuzzy C-means clustering in the scheme are modified, and the kernel function and the neighbor spatial information are combined to improve the mode of action of the neighboring pixels on the center pixel, so that the center pixel of window can be adaptively updated through neighborhood pixel to achieve the purpose of filtering noise. The algorithm is applied and tested in synthetic and real images with salt and pepper noise and Gaussian noise, and the experimental results shown that compared with the other five traditional fuzzy C-means clustering and their improved schemes, the proposed algorithm is robust to noise, and the segmentation accuracy is significantly improved. In addition, the fuzzy clustering performance of the algorithm is also improved in the validity of the fuzzy division tested by three indicators.
机译:模糊聚类已广泛应用于图像分割领域,但它对图像中的噪声敏感。为了解决这一问题,本文提出了组合邻域空间约束的无监督图像分割改进方案。修改了方案中传统模糊C-MEARIAL聚类的目标函数,并且组合了内核功能和邻居空间信息以改善中心像素上的相邻像素的动作模式,使窗口的中心像素可以通过邻域像素自适应地更新以达到滤波的目的。该算法应用并在具有盐和辣椒噪声和高斯噪声的合成和真实图像中测试,并且实验结果表明,与其他五种传统的模糊C型聚类和其改进的方案相比,该算法对噪音具有鲁棒性,并且分割准确性得到了显着改善。此外,算法的模糊聚类性能也在三个指标测试的模糊分裂的有效性中提高。

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