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首页> 外文期刊>Computational and mathematical methods in medicine >Brain Tissue Segmentation and Bias Field Correction of MR Image Based on Spatially Coherent FCM with Nonlocal Constraints
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Brain Tissue Segmentation and Bias Field Correction of MR Image Based on Spatially Coherent FCM with Nonlocal Constraints

机译:基于空间相干FCM的脑组织分割与非识别限制的空间相干FCM的偏置场校正

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Influenced by poor radio frequency field uniformity and gradient-driven eddy currents, intensity inhomogeneity (or bias field) and noise appear in brain magnetic resonance (MR) image. However, some traditional fuzzy c-means clustering algorithms with local spatial constraints often cannot obtain satisfactory segmentation performance. Therefore, an objective function based on spatial coherence for brain MR image segmentation and intensity inhomogeneity correction simultaneously is constructed in this paper. First, a novel similarity measure including local neighboring information is designed to improve the separability of MR data in Gaussian kernel mapping space without image smoothing, and the similarity measure incorporates the spatial distance and grayscale difference between cluster centroid and its neighborhood pixels. Second, the objective function with an adaptive nonlocal spatial regularization term is drawn upon to compensate the drawback of the local spatial information. Meanwhile, bias field information is also embedded into the similarity measure of clustering algorithm. From the comparison between the proposed algorithm and the state-of-the-art methods, our model is more robust to noise in the brain magnetic resonance image, and the bias field is also effectively estimated.
机译:受射频场均匀性差和梯度驱动的涡流,强度不均匀性(或偏置场)和噪声出现在脑磁共振(MR)图像中出现的影响。然而,一些具有局部空间约束的传统模糊C-Means聚类算法通常无法获得满意的分割性能。因此,本文构建了基于对脑MR图像分割和强度不均匀性校正的空间相干性的目标函数。首先,设计包括本地相邻信息的新的相似性度量,以改善在没有图像平滑的高斯内核映射空间中的MR数据的可分离性,并且相似度测量包含集群质心和其邻域像素之间的空间距离和灰度差。其次,绘制具有自适应非局部空间正则化术语的目标函数,以补偿局部空间信息的缺点。同时,偏置现场信息也嵌入到聚类算法的相似度量中。根据所提出的算法和最先进的方法之间的比较,我们的模型对脑磁共振图像中的噪声更加稳健,并且还有效地估计偏置场。

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