首页> 外文会议>IFSA(International Fuzzy Systems Association); 2007; >Improved Fuzzy C-Means Segmentation Algorithm for Images with Intensity Inhomogeneity
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Improved Fuzzy C-Means Segmentation Algorithm for Images with Intensity Inhomogeneity

机译:强度不均匀图像的改进模糊C均值分割算法

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摘要

Image segmentation is a classic problem in computer image comprehension and related fields. Up to now, there are not any general and valid partition methods which could satisfy different purposes, especially for medical images such as magnetic resonance images, which often corrupted by multiple imaging artifacts, for example intensity inhomogeneity, noise and partial volume effects. In this paper, we propose an improved fuzzy c-means image segmentation algorithm with more accurate results and faster computation. Considering two voxels with the same intensity belonging to the same tissue, we use q intensity levels instead of n intensity values in the objective function of the fuzzy c-means algorithm, which makes the algorithm clusters much faster since q is much smaller than n. Furthermore, a gain field is incorporate in the objective function to compensate for the inhomogeneity. In addition, we use c-means clustering algorithm to initialize the centroids. This can further accelerate the clustering. The test results show that the proposed algorithm not only gives more accurate results but also makes the computation faster.
机译:图像分割是计算机图像理解及相关领域中的经典问题。迄今为止,还没有任何通用且有效的分区方法可以满足不同的目的,尤其是对于医学图像,例如磁共振图像,这些图像经常被多个成像伪影破坏,例如强度不均匀,噪声和部分体积效应。本文提出了一种改进的模糊c均值图像分割算法,其结果更准确,计算速度更快。考虑到属于同一组织的两个强度相同的体素,我们在模糊c均值算法的目标函数中使用q强度级别而不是n强度值,这使该算法的聚类速度更快,因为q远小于n。此外,将增益场并入目标函数中以补偿不均匀性。另外,我们使用c-means聚类算法来初始化质心。这可以进一步加速群集。测试结果表明,该算法不仅给出了更准确的结果,而且使计算速度更快。

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