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Robust global minimization of active contour model for multi-object medical image segmentation

机译:用于多目标医学图像分割的主动轮廓模型的鲁棒全局最小化

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The performance of active contour model is limited to the zero level set functions and energy weight coefficients, which affect the accuracy of the segmentation results seriously. A new robust global minimization of active contour model is proposed in this paper to eliminate those limitations for multi-object medical image segmentation. The zero level set functions are initialized with the coarse results extracted by spatial fuzzy C-means clustering, while the energy weight coefficients are also estimated with the coarse results. The level set evolution starts from the regions near the true boundaries. Therefore, the energy functional converges to global minimum instead of falling into local minimum. These improvements lead to more robust segmentation results. The proposed algorithm is verified with multi-object medical image segmentation. The results demonstrate that compared with traditional algorithm the performance of the proposed algorithm is better for multi-object medical image segmentation in presence of complex shapes and weak boundaries.
机译:主动轮廓模型的性能仅限于零级设置函数和能量权重系数,这严重影响了分割结果的准确性。本文提出了一种新的鲁棒的全局主动轮廓模型最小化方法,以消除多对象医学图像分割的局限性。零级集函数用通过空间模糊C均值聚类提取的粗略结果初始化,而能量权重系数也用该粗略结果估计。水平集的演化从靠近真实边界的区域开始。因此,能量函数收敛到全局最小值而不是陷入局部最小值。这些改进带来了更强大的细分结果。通过多目标医学图像分割验证了该算法的有效性。结果表明,与传统算法相比,该算法在形状复杂,边界较弱的情况下对多目标医学图像的分割效果更好。

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