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Image Segmentation Model Based on Local Image Fitting Energy and Split Bregman Method

机译:基于局部图像拟合能量和分裂Bregman方法的图像分割模型

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PDE based image segmentation methods are the state-of-the-art methods due to the high accuracy and continuity of detected edges. Some examples are the region-scalable fitting (RSF) model and the local image fitting energy (LIF) model. But they suffer from the high computing complexity and instability. Recently, the globally convex method and the split Bregman method are introduced to overcome this problem. In this paper, a globally convex version of the LIF model is proposed and then the split Bregman method is used to solve the model. Experiments show that this model is more efficient than the RSF model and the LIF model while with similar segmentation results.
机译:基于PDE的图像分割方法是最先进的方法,这归因于所检测边缘的高精度和连续性。一些示例是区域可缩放拟合(RSF)模型和局部图像拟合能量(LIF)模型。但是它们遭受高度的计算复杂性和不稳定性的困扰。最近,为了解决该问题,引入了全局凸方法和分裂布雷格曼方法。本文提出了LIF模型的全局凸版本,然后使用分裂Bregman方法求解该模型。实验表明,该模型比RSF模型和LIF模型更有效,并且具有相似的分割结果。

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