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A Multiresolution Approach Based on MRF and Bak-Sneppen Models for Image Segmentation

机译:基于MRF和Bak-Sneppen模型的多分辨率图像分割

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The two major Markov Random Fields (MRF) based algorithms for image segmentation are the Simulated Annealing (SA) and Iterated Conditional Modes (ICM). In practice, compared to the SA, the ICM provides reasonable segmentation and shows robust behavior in most of the cases. However, the ICM strongly depends on the initialization phase. In this paper, we combine Bak-Sneppen model and Markov Random Fields to define a new image segmentation approach. We introduce a multiresolution technique in order to speed up the segmentation process and to improve the restoration process. Image pixels are viewed as lattice species of Bak-Sneppen model. The a-posteriori probability corresponds to a local fitness. At each cycle, some objectionable species are chosen for a random change in their fitness values. Furthermore, the change in the fitness of each species engenders fitness changes for its neighboring species. After a certain number of iteration, the system converges to a Maximum A Posteriori estimate. In this multireolution approach, we use a wavelet transform to reduce the size of the system.
机译:基于主要马尔可夫随机场(MRF)的图像分割算法是模拟退火(SA)和迭代条件模式(ICM)。实际上,与SA相比,ICM提供了合理的细分,并且在大多数情况下都表现出强大的行为。但是,ICM在很大程度上取决于初始化阶段。在本文中,我们结合了Bak-Sneppen模型和Markov随机场,定义了一种新的图像分割方法。我们引入了一种多分辨率技术,以加快分割过程并改善恢复过程。图像像素被视为Bak-Sneppen模型的晶格种类。后验概率对应于局部适应度。在每个周期中,都会选择一些令人讨厌的物种,以使其适应度值随机变化。此外,每个物种适应度的变化都会导致其邻近物种的适应度发生变化。经过一定数量的迭代后,系统收敛到最大后验估计。在这种多分辨率方法中,我们使用小波变换来减小系统的大小。

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