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A Local Neighborhood Robust Fuzzy Clustering Image Segmentation Algorithm Based on an Adaptive Feature Selection Gaussian Mixture Model

机译:基于自适应特征选择高斯混合模型的局部邻域鲁棒模糊聚类图像分割算法

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摘要

Since the fuzzy local information C-means (FLICM) segmentation algorithm cannot take into account the impact of different features on clustering segmentation results, a local fuzzy clustering segmentation algorithm based on a feature selection Gaussian mixture model was proposed. First, the constraints of the membership degree on the spatial distance were added to the local information function. Second, the feature saliency was introduced into the objective function. By using the Lagrange multiplier method, the optimal expression of the objective function was solved. Neighborhood weighting information was added to the iteration expression of the classification membership degree to obtain a local feature selection based on feature selection. Each of the improved FLICM algorithm, the fuzzy C-means with spatial constraints (FCM_S) algorithm, and the original FLICM algorithm were then used to cluster and segment the interference images of Gaussian noise, salt-and-pepper noise, multiplicative noise, and mixed noise. The performances of the peak signal-to-noise ratio and error rate of the segmentation results were compared with each other. At the same time, the iteration time and number of iterations used to converge the objective function of the algorithm were compared. In summary, the improved algorithm significantly improved the ability of image noise suppression under strong noise interference, improved the efficiency of operation, facilitated remote sensing image capture under strong noise interference, and promoted the development of a robust anti-noise fuzzy clustering algorithm.
机译:由于模糊局部信息C均值(FLICM)分割算法无法考虑不同特征对聚类分割结果的影响,提出了一种基于特征选择高斯混合模型的局部模糊聚类分割算法。首先,将隶属度对空间距离的约束添加到局部信息函数中。其次,将特征显着性引入目标函数。通过使用拉格朗日乘数法,求解了目标函数的最优表达式。将邻域加权信息添加到分类隶属度的迭代表达式中,以基于特征选择获得局部特征选择。然后,分别使用改进的FLICM算法,具有空间约束的模糊C均值(FCM_S)算法和原始FLICM算法对高斯噪声,盐椒噪声,乘性噪声和混合噪音。比较了分割结果的峰信噪比和误码率性能。同时,比较了用于收敛算法目标函数的迭代时间和迭代次数。综上所述,改进后的算法显着提高了强噪声干扰下的图像噪声抑制能力,提高了操作效率,促进了强噪声干扰下的遥感图像捕获,促进了鲁棒抗噪模糊聚类算法的发展。

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