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Peripheral nerve segmentation based on the improved Grab Cut

机译:基于改进的Grab Cut的周围神经分割

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Peripheral nerve segmentation is difficult because of similar characteristics. In this paper, an interactive segmentation method based on K-Harmonic Means clustering and improved Grab Cut is proposed. Firstly, peripheral nerve images are processed with K-Harmonic Means clustering algorithm, and images are divided into some regions where the pixel characteristics are similar. Then the Gaussian mixture model(GMM) parameters are initialized for every region through K-Harmonic Means clustering. Finally, the parameters are estimated with the iteration method to minimize the energy function and achieve correct segmentation results. Experimental results show that the proposed method is effective for peripheral nerve segmentation and has achieved good performance.
机译:由于相似的特征,周围神经很难分割。提出了一种基于K-调和均值聚类和改进的Grab Cut的交互式分割方法。首先,利用K-Harmonic Means聚类算法对周围神经图像进行处理,并将图像划分为像素特征相似的一些区域。然后通过K-调和均值聚类为每个区域初始化高斯混合模型(GMM)参数。最后,使用迭代方法估计参数以最小化能量函数并获得正确的分割结果。实验结果表明,该方法对周围神经分割有效,并取得了良好的效果。

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