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Improving the runtime of MRF based method for MRI brain segmentation

机译:改进基于MRF的MRI脑分割方法的运行时间

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摘要

Image segmentation is one of the important parts in medical image analysis. Markov random field (MRF) is one of the successful methods for MRI image segmentation, but conventional MRF methods suffer from high computational cost. MRI images have high level of artifacts such as Partial Volume Effect (PVE), intensity non uniformity (INU) and other noises, so using global optimization methods like simulated annealing (SA) for optimization step is more appropriate than other local optimization methods such as Iterative Conditional Modes (ICM). On the other hand, these methods also has heavy computational burden and they are not appropriate for real time task. This paper uses a proper combination of clustering methods and MRF and proposes a preprocessing step for MRF method for decreasing the computational burden of MRF for segmentation. The results show that the preprocessing step increased the speed of segmentation algorithm by a factor of about 10 and have no large impact on the accuracy of segmentation. Moreover, different clustering methods can be used for the first step and estimation of the parameters. Therefore, using of powerful clustering methods can provide a better segmentation results. (C) 2015 Elsevier Inc. All rights reserved.
机译:图像分割是医学图像分析的重要组成部分之一。马尔可夫随机场(MRF)是MRI图像分割的成功方法之一,但是传统的MRF方法具有较高的计算成本。 MRI图像具有较高的伪影水平,例如部分体积效应(PVE),强度非均匀性(INU)和其他噪声,因此使用全局优化方法(例如模拟退火(SA))进行优化步骤比其他局部优化方法(例如迭代条件模式(ICM)。另一方面,这些方法也具有沉重的计算负担,并且不适用于实时任务。本文使用聚类方法和MRF的适当组合,并提出了MRF方法的预处理步骤,以减少用于分割的MRF的计算负担。结果表明,预处理步骤将分割算法的速度提高了约10倍,并且对分割精度没有太大影响。此外,可以将不同的聚类方法用于第一步和参数估计。因此,使用强大的聚类方法可以提供更好的分割结果。 (C)2015 Elsevier Inc.保留所有权利。

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