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A Fast Global Minimization of Region-Scalable Fitting Model for Medical Image Segmentation

机译:用于图像分割的区域可缩放拟合模型的快速全局最小化

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摘要

Active contour model (ACM) which has been extensively studied recently is one of the most successful methods in image segmentation. The present paper advances an improved hybrid model based on Region-Scalable Fitting Model by combining global convex segmentation method with edge detector operator. The proposed model not only inherits the ability of RSF model to deal with the images with intensity inhomogeneity, but also overcomes such a drawback: existence of local minima because of non-convexity that makes the segmentation result highly dependent of the initial position of the contour. In addition, the paper exploits two fast numerical implementation schemes to overcome a huge amount of level set methods. The duality projection method is implemented by introducing dual variables which lead to semi-implicit iterative scheme of dual variables as well as exact formulation of primal variables. The Split-Bregman method is implemented by introducing auxiliary variables which transform the relaxed convex model into solving simple poisson equations and exact soft thresholding formulation. Experimental results for synthetic and real medical images prove that the proposed model is featured by greater numerical accuracy and faster division speed.
机译:主动轮廓模型(ACM)是最近被广泛研究的,是图像分割中最成功的方法之一。通过结合全局凸分割方法和边缘检测算子,提出了一种基于区域可扩展拟合模型的改进混合模型。所提出的模型不仅继承了RSF模型处理强度不均匀的图像的能力,而且克服了这样的缺点:由于不存在凸性,局部极小值的存在使得分割结果高度依赖轮廓的初始位置。此外,本文利用两种快速的数值实现方案来克服大量的水平集方法。通过引入对偶变量实现对偶投影方法,该对偶变量导致对偶变量的半隐式迭代方案以及对原始变量的精确表示。通过引入辅助变量来实现Split-Bregman方法,该辅助变量将松弛的凸模型转换为求解简单的泊松方程和精确的软阈值公式。合成和真实医学图像的实验结果证明,该模型具有更高的数值精度和更快的分割速度。

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