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Comparison of Hybrid ACO-k-means algorithm and Grub cut for MRI images segmentation

机译:混合ACO-k算法与GRI图像分割的GRUB切割的比较

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摘要

Image segmentation is the process of dividing image into homogenous regions by some charasteristics and is widely used in medical diagnostics. Segmentation algorithms are used for anatomical features extraction from medical images. The Hybrid Ant Colony Optimization (ACO) – k-means and Grub Cut image segmentation algorithms for MRI images segmentation are considered in this paper. The proposed algorithms and sub-system for the medical image segmentation have been implemented. As there is no universal algorithm for medical image segmentation, image segmentation is still a challenging problem in image processing and computer vision in many real time applications and hence more research work is required. The experimental results show that the proposed algorithm has good accuracy in comparison to Grub cut.
机译:图像分割是一些Charasteristics将图像分成同质区域的过程,并且广泛用于医疗诊断。 分段算法用于从医学图像提取的解剖学特征。 本文考虑了用于MRI图像分割的混合蚁核优化(ACO) - K型和GRUB切割图像分割算法。 已经实施了所提出的用于医学图像分割的算法和子系统。 由于没有用于医学图像分割的通用算法,因此在许多实时应用中,图像分割仍然是图像处理和计算机视觉中的具有挑战性问题,因此需要更多的研究工作。 实验结果表明,该算法与Grub Cut相比具有良好的精度。

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