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Brain tissue segmentation in MR images based on a hybrid of MRF and social algorithms

机译:基于MRF和社会算法混合的MR图像中的脑组织分割。

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Effective abnormality detection and diagnosis in Magnetic Resonance Images (MRIs) requires a robust segmentation strategy. Since manual segmentation is a time-consuming task which engages valuable human resources, automatic MRI segmentations received an enormous amount of attention. For this goal, various techniques have been applied. However, Markov Random Field (MRF) based algorithms have produced reasonable results in noisy images compared to other methods. MRF seeks a label field which minimizes an energy function. The traditional minimization method, simulated annealing (SA), uses Monte Carlo simulation to access the minimum solution with heavy computation burden. For this reason, MRFs are rarely used in real time processing environments. This paper proposed a novel method based on MRF and a hybrid of social algorithms that contain an ant colony optimization (ACO) and a Gossiping algorithm which can be used for segmenting single and multispectral MRIs in real time environments. Combining ACO with the Gossiping algorithm helps find the better path using neighborhood information. Therefore, this interaction causes the algorithm to converge to an optimum solution faster. Several experiments on phantom and real images were performed. Results indicate that the proposed algorithm outperforms the traditional MRF and hybrid of MRF-ACO in speed and accuracy.
机译:在磁共振图像(MRI)中进行有效的异常检测和诊断需要可靠的分割策略。由于手动分割是一项耗时的工作,需要大量的人力资源,因此自动MRI分割受到了广泛的关注。为了这个目标,已经应用了各种技术。但是,与其他方法相比,基于马尔可夫随机场(MRF)的算法在嘈杂图像中产生了合理的结果。 MRF寻找一个使能量函数最小的标签字段。传统的最小化方法,模拟退火(SA),使用蒙特卡洛模拟来访问具有沉重计算负担的最小解决方案。因此,MRF很少用于实时处理环境。本文提出了一种基于MRF和社交算法混合的新方法,该方法包含蚁群优化(ACO)和Gossiping算法,可用于在实时环境中分割单谱和多谱MRI。将ACO与Gossiping算法结合使用有助于使用邻域信息找到更好的路径。因此,这种相互作用使算法更快地收敛到最优解。进行了幻影和真实图像的几个实验。结果表明,该算法在速度和精度上均优于传统的MRF和MRF-ACO混合算法。

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