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A soft unsupervised two-phase image segmentation model based on global probability density functions

机译:基于全局概率密度函数的软无监督两相图像分割模型

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In this paper, we propose an unsupervised variational two-phase image segmentation model based on Fuzzy Region Competition. This model uses probability density functions to design image regions and to set a homogeneity criterion for the competition between regions. The key idea of the proposed model is to optimize the probability distribution parameters while the segmentation procedure takes place. The experiments in natural and noisy images showed that the proposed model is robust in relation to noise and presents better segmentation results using texturized images than the unsupervised piecewise constant case of Fuzzy Region Competition method.
机译:本文提出了一种基于模糊区域竞争的无监督变分两相图像分割模型。该模型使用概率密度函数设计图像区域并为区域之间的竞争设置同质性标准。该模型的关键思想是在分割过程发生时优化概率分布参数。在自然和嘈杂图像中进行的实验表明,与模糊区域竞争法的无监督分段常数情况相比,所提出的模型在噪声方面具有鲁棒性,并且使用纹理化图像可以提供更好的分割结果。

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