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Fast algorithm to minimize model combining dynamically local and global fitting energy for image segmentation

机译:快速算法以最小化模型,该模型结合了动态局部和全局拟合能量进行图像分割

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Segmentation by using region-based deformable models has known a great success and large domain of applications. In this paper, we propose a fast algorithm to minimise model which combines local fitting energy and global fitting energy. The minimisation via the proposed algorithm avoids solving any Partial Differential Equation PDE. Consequently, there is no need to any stability conditions. Furthermore, owing to the fast convergence we don't need to the re-initialisation step and the term that keeps Level Set LS as Signed Distance Function SDF. In addition, we have used a dynamic function to adjust between the local and global energies. Successful segmentation results are obtained on synthetic and real images with a great saving of CPU time compared to the minimisation via gradient descent method.
机译:通过使用基于区域的可变形模型进行分割已经获得了巨大的成功,并且具有广泛的应用领域。在本文中,我们提出了一种将局部拟合能量和全局拟合能量相结合的最小化模型的快速算法。通过所提出的算法的最小化避免了求解任何偏微分方程PDE。因此,不需要任何稳定性条件。此外,由于快速收敛,我们不需要重新初始化步骤,也不需要将Level Set LS保留为Signed Distance Function SDF的术语。此外,我们使用动态函数在局部和全局能量之间进行调整。与通过梯度下降方法实现的最小化相比,在合成图像和真实图像上获得了成功的分割结果,并且大大节省了CPU时间。

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