基于相对线性交互聚类的超体素特征确定

Abdelkhalek Bakkari, A. Fabijańska
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引用次数: 3

摘要

摘要本文研究了三维磁共振成像(MRI)和计算机断层扫描(CT)脑图像的分割问题。考虑了基于超体素的分割。特别介绍了一种新的聚类方法——相对线性交互聚类(RLIC)。该方法是对简单线性交互聚类(Simple Linear Interactive Clustering, SLIC)超像素算法的扩展,致力于将图像划分为超体素。在RLIC执行过程中,首先初始化集群中心和规则网格大小。然后用模糊c均值算法聚类。然后,进行超体素统计特征的提取。该方法有利于三维图像的分割,完全满足体积图像分割的要求。五个案例的测试表明,我们的相对线性交互聚类(RLIC)能够以较低的计算成本和较高的精度处理大尺寸的图像。并对该方法在脑肿瘤分割中的应用结果进行了讨论。
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Features Determination from Super-Voxels Obtained with Relative Linear Interactive Clustering
Abstract In this paper, the problem of segmentation of 3D Magnetic Resonance Imaging (MRI) and Computed Tomography (CT) brain images is considered. A supervoxel-based segmentation is regarded. In particular, a new approach called Relative Linear Interactive Clustering (RLIC) is introduced. The method, dedicated to image division into super-voxels, is an extension of the Simple Linear Interactive Clustering (SLIC) super-pixels algorithm. During RLIC execution firstly, the cluster centres and the regular grid size are initialized. These are next clustered by Fuzzy C-Means algorithm. Then, the extraction of the super-voxels statistical features is performed. The method contributes with 3D images and serves fully volumetric image segmentation. Five cases are tested demonstrating that our Relative Linear Interactive Clustering (RLIC) is apt to handle huge size of images with a significant accuracy and a low computational cost. The results of applying the suggested method to segmentation of the brain tumour are exposed and discussed.
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