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MRI brain lesion segmentation using generalized opposition-based glowworm swarm optimization

机译:基于广义对立的萤火虫群​​优化的MRI脑病变分割

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摘要

An improved glowworm swarm optimization algorithm with generalized opposition-based learning is proposed in this paper and is used in segmentation for magnetic resonance images. Noises are removed and intensity inhomogeneities are corrected in the MR images. Next, a clustering technique with glowworm swarm optimization algorithm with generalized opposition based learning is used. Finally, lesions are separated from the normal tissues of the brain in the post-processing step. The performance of the proposed methodology based on both numerical and visual results are compared with K-means and particle swarm optimization based methodologies over two sets of MR images. The experimental results demonstrate that the proposed methodology statistically outperforms other methodologies.
机译:提出了一种基于广义对立学习的改进的萤火虫群​​优化算法,并将其用于磁共振图像的分割。消除了噪声,并在MR图像中校正了强度不均匀性。接下来,使用具有基于广义对立学习的萤火虫群​​优化算法的聚类技术。最后,在后处理步骤中将病变与大脑的正常组织分开。将基于数值和视觉结果的拟议方法的性能与K均值和基于粒子群优化的方法在两组MR图像上进行比较。实验结果表明,所提出的方法在统计学上优于其他方法。

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