Improved Fuzzy Connectedness Segmentation Method for Medical Images with Multiple Seeds in MRI

Yunping Zheng, Tong Chang, M. Sarem
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Abstract

Image segmentation is a key step in medical image processing, since it affects the quality of the medical image in the follow-up steps. However, in the practice of processing MRI images, we find out that the segmentation process involves much difficulty due to the poorly defined boundaries of medical images, meanwhile, there are usually more than one target area. In this study, an improved algorithm based on the fuzzy connectedness framework for medical image is developed. The improved algorithm has involved an adaptive fuzzy connectedness segmentation combined with multiple seeds selection. Also, the algorithm can effectively overcome many problems when manual selection is used, such as the un-precise result of each target region segmented of the medical image and the difficulty of completion the segmentation when the areas are not connected. For testing the proposed method, some original real images, taken from a large hospital, were analyzed. The results have been evaluated with some rules, such as Dice’s coefficient, over segmentation rate, and under segmentation rate. The results show that the proposed method has an ideal segmentation boundary on medical images, meanwhile, it has a low time cost. In conclusion, the proposed method is superior to the traditional fuzzy connectedness segmentation methods for medical images.
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磁共振多种子医学图像的改进模糊连通性分割方法
图像分割是医学图像处理的关键步骤,它直接影响到后续处理的医学图像质量。然而,在对MRI图像进行处理的实践中,我们发现由于医学图像的边界不明确,分割过程非常困难,同时通常存在多个目标区域。本文提出了一种基于模糊连通性框架的医学图像改进算法。改进算法将自适应模糊连通性分割与多种子选择相结合。此外,该算法还能有效克服人工选择医学图像时存在的对每个目标区域分割结果不精确、区域间不连通时难以完成分割等问题。为了验证该方法,对某大型医院的一些原始真实图像进行了分析。用Dice系数、过分割率和欠分割率等规则对结果进行了评价。结果表明,该方法对医学图像具有理想的分割边界,同时具有较低的时间成本。综上所述,该方法优于传统的医学图像模糊连通分割方法。
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