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Brain Tumor Segmentation in 3D MRIs Using an Improved Markov Random Field Model

机译:使用改进的马尔可夫随机场模型在3D MRI中进行脑肿瘤分割

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Markov Random Field (MRF) models have been recently suggested for MRI brain segmentation by a large number of researchers. By employing Markovianity, which represents the local property, MRF models are able to solve a global optimization problem locally. But they still have a heavy computation burden, especially when they use stochastic relaxation schemes such as Simulated Annealing (SA). In this paper, a new 3D-MRF model is put forward to raise the speed of the convergence. Although, search procedure of SA is fairly localized and prevents from exploring the same diversity of solutions, it suffers from several limitations. In comparison, Genetic Algorithm (GA) has a good capability of global researching but it is weak in hill climbing. Our proposed algorithm combines SA and an improved GA (IGA) to optimize the solution which speeds up the computation time. What is more, this proposed algorithm outperforms the traditional 2D-MRF in quality of the solution.
机译:最近,许多研究人员建议使用Markov随机场(MRF)模型进行MRI脑分割。通过采用代表局部属性的马尔可夫性,MRF模型能够在本地解决全局优化问题。但是它们仍然具有沉重的计算负担,尤其是当它们使用诸如模拟退火(SA)之类的随机松弛方案时。本文提出了一种新的3D-MRF模型,以提高收敛速度。尽管SA的搜索过程相当局限,并且阻止了探索相同解决方案的多样性,但它仍然受到一些限制。相比之下,遗传算法(GA)具有很好的全局研究能力,但在爬坡方面却较弱。我们提出的算法结合了SA和改进的GA(IGA)来优化解决方案,从而加快了计算时间。而且,该算法在解决方案质量方面优于传统的2D-MRF。

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