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Adaptive Segmentation of Vertebral Bodies from Sagittal MR Images Based on Local Spatial Information and Gaussian Weighted Chi-Square Distance

机译:基于局部空间信息和高斯加权卡方距离的矢状MR图像椎体自适应分割

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摘要

We present a novel method for the automatic segmentation of the vertebral bodies from 2D sagittal magnetic resonance (MR) images of the spine. First, a new affinity matrix is constructed by incorporating neighboring information, which local intensity is considered to depict the image and overcome the noise effectively. Second, the Gaussian kernel function is to weight chi-square distance based on the neighboring information, which the vital spatial structure of the image is introduced to improve the accuracy of the segmentation task. Third, an adaptive local scaling parameter is utilized to facilitate the image segmentation and avoid the optimal configuration of controlling parameter manually. The encouraging results on the spinal MR images demonstrate the advantage of the proposed method over other methods in terms of both efficiency and robustness.
机译:我们提出了一种新的方法,从脊柱的2D矢状核磁共振(MR)图像中自动分割椎骨。首先,通过结合邻近信息来构造新的亲和力矩阵,该局部信息被认为是局部强度来描绘图像并有效地克服噪声。其次,高斯核函数是基于邻近信息加权卡方距离,引入图像的重要空间结构以提高分割任务的准确性。第三,利用自适应局部缩放参数来促进图像分割并避免手动控制参数的最佳配置。脊柱MR图像上令人鼓舞的结果证明了该方法在效率和鲁棒性方面优于其他方法的优势。

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