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Active contours driven by Gaussian function and adaptive-scale local correntropy-based K-means clustering for fast image segmentation

机译:高斯函数和基于自适应尺度的局部检查基于自适应的基于局部检查的K均值聚类的活动轮廓为快速图像分割

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摘要

In this paper, we proposed a novel active contour model based on Gaussian function and adaptive-scale local correntropy-based K-means clustering (Gaussian-ASLCK) that is applicable to images with severe intensity inhomogeneity. Firstly, Gaussian function is used to capture the global intensity of images, which boosts the robustness to the initialization. Subsequently, by employing the adaptive scale operator, the scale of the proposed model can be adjusted automatically according to the degree of intensity inhomogeneity. In addition, the regularized term is approximated by a non-local energy, which is constructed based on characteristic functions in the field of heat kernel convolution. Finally, the iterative convolution-thresholding method is designed for minimizing the energy function. This method is simple, efficient and has the optimal complexity of O(Nlog N) per iteration. The experimental results comprehensively validate that the proposed Gaussian-ASLCK model enjoys greater success in images with severe intensity inhomogeneity and complex noise over other state-of-the-art models.
机译:在本文中,我们提出了一种基于高斯函数和基于自适应规模的基于局部检查的K均值的新型活性轮廓模型(高斯 - ASCK),适用于具有严重强度不均匀性的图像。首先,高斯函数用于捕获全局图像强度,这会提高初始化的鲁棒性。随后,通过采用自适应刻度操作员,可以根据强度不均匀程度自动调整所提出的模型的比例。另外,正则化术语由非局部能量近似,这基于热核卷积领域的特征函数构建。最后,设计用于最小化能量函数的迭代卷积阈值方法。该方法简单,有效,并且具有每个迭代的O(NLOG N)的最佳复杂性。实验结果全面地验证了所提出的高斯 - Aslck模型在具有严重强度不均匀性和其他最先进模型的复杂噪声的图像中取得更大的成功。

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