基于空间约束的自适应正则化核FCM脑磁共振图像分割

Ran Fang, Yinan Lu, Xiaoni Liu, Zhuo Liu
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引用次数: 3

摘要

FCM算法是一种流行的医学图像分割算法。在存在噪声和其他图像伪影的情况下,脑组织图像的精确分割过程变得更具挑战性。提出了一种改进的自适应正则化核FCM方法。引入隶属度的空间约束函数,通过调整像素与聚类中心之间的影响程度来增强聚类。实验结果表明,与其他软聚类算法相比,改进算法提高了分割精度。
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Segmentation of brain MR images using an adaptively regularized kernel FCM algorithm with spatial constraints
FCM algorithm is a popular algorithm for medical image segmentation. The precise process of segmenting brain tissue images becomes more challenging in the presence of noise and other image artifacts. An improved adaptively regularized kernel FCM method is proposed in this paper. The spatial constraint function of membership is introduced to enhance clustering by adjusting the degree of influence between pixels and clustering centers. Experimental results on the brain images with different types and levels of noises demonstrate that the improved algorithm increases the accuracy of segmentation compared with the other soft clustering algorithms.
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