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MULTI-CLASS SEGMENTATION BASED ON GENERALIZED FUZZY GIBBS RANDOM FIELDS

机译:基于广义模糊GIBBS随机字段的多级分段

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摘要

The model of Gibbs random fields is widely applied to Bayesian segmentation due to its best property of describing the spatial constraint information. However, the general segmentation methods, whose model is defined only on hard levels but not on fuzzy set, may come across a lot of difficulties, e.g., getting the unexpected results or even nothing, especially when the blurred or degraded images are considered In this paper, two multi-class approaches, based on the model of Piecewise Fuzzy Gibbs Random Fields (PFGRF) and that of Generalized Fuzzy Gibbs Random Fields (GFGRF) respectively, are presented to address these difficulties. In our experiments, both magnetic resonance image and simulated image are implemented with the two approaches mentioned above and the classical "hard" one. These three different results show that the approach of GFGRF is an efficient and unsupervised technique, which can automatically and optimally segment the images to be finer.
机译:由于其描述空间约束信息的最佳特性,GIBBS随机字段的模型被广泛应用于贝叶斯分割。但是,常规分割方法,其模型仅在硬级别上定义但不是模糊集,可能会遇到很多困难,例如,获得意外结果甚至没有,特别是当考虑模糊或降级的图像时纸张,两种多级方法,基于分段模糊GIBBS随机字段(PFGRF)的模型以及广义模糊GIBBS随机字段(GFGRF)以解决这些困难。在我们的实验中,磁共振图像和模拟图像都用上面提到的两种方法和经典的“硬”。这三种不同的结果表明,GFGRF的方法是一种有效和无监督的技术,它可以自动和最佳地将图像分段为更精细。

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