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首页> 外文期刊>Journal of medical systems >IFCM Based Segmentation Method for Liver Ultrasound Images
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IFCM Based Segmentation Method for Liver Ultrasound Images

机译:基于IFCM的肝超声图像分割方法

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In this paper we have proposed an iterative Fuzzy C-Mean (IFCM) method which divides the pixels present in the image into a set of clusters. This set of clusters is then used to segment a focal liver lesion from a liver ultrasound image. Advantage of IFCM methods is that n-clusters FCM method may lead to non-uniform distribution of centroids, whereas in IFCM method centroids will always be uniformly distributed. Proposed method is compared with the edge based Active contour Chan-Vese (CV) method, and MAP-MRF method by implementing the methods on MATLAB. Proposed method is also compared with region based active contour region-scalable fitting energy (RSFE) method whose-MATLAB code is available in author's website. Since no comparison is available on a common database, the performance of three methods and the proposed method have been compared on liver ultrasound (US) images available with us. Proposed method gives the best accuracy of 99.8 % as compared to accuracy of 99.46 %, 95.81 % and 90.08 % given by CV, MAP-MRF and RSFE methods respectively. Computation time taken by the proposed segmentation method for segmentation is 14.25 s as compared to 44.71, 41.27 and 49.02 s taken by CV, MAP-MRF and RSFE methods respectively.
机译:在本文中,我们提出了一种迭代模糊C均值(IFCM)方法,该方法将图像中存在的像素分为一组聚类。然后使用这组簇从肝脏超声图像中分割出局灶性肝脏病变。 IFCM方法的优点是n-簇FCM方法可能导致质心分布不均匀,而在IFCM方法中,质心将始终均匀分布。通过在MATLAB上实现该方法,将该方法与基于边缘的主动轮廓线Chan-Vese(CV)方法和MAP-MRF方法进行了比较。还将该提议的方法与基于区域的主动轮廓区域可缩放拟合能量(RSFE)方法进行了比较,该方法的MATLAB代码可在作者的网站上找到。由于在公共数据库上没有比较可用的方法,因此已经在我们提供的肝脏超声(US)图像上比较了三种方法和建议方法的性能。与CV,MAP-MRF和RSFE方法分别给出的99.46%,95.81%和90.08%的准确度相比,所提出的方法的最佳准确度为99.8%。所提出的分割方法用于分割的计算时间为14.25 s,而CV,MAP-MRF和RSFE方法分别为44.71、41.27和49.02 s。

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