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An image segmentation method based on Mumford-Shah model with mask factor and neighborhood factor

机译:基于Mumford-Shah模型的蒙版因子和邻域因子的图像分割方法

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摘要

A novel image segmentation model is proposed to improve the stability of existing segmentation methods. In the proposed model, we introduce two factors into the Mumford-Shah model, including mask factor and neighborhood factor. Firstly, the mask factor can express the image more accurately. Therefore, the new segmentation model can more realistically reflect the structure of the image. Moreover, neighborhood factor is used to constrain the evolution of the initial contour. Then the segmentation model is converted into an equivalent form by a level set function. At last, the model can be solved in a simple way based on partial differential equations and extreme values. The experimental results show the proposed method could generate accurate segmentation results, and the segmentation results are not sensitive to initial contour and external disturbances, such as noise and blurring.
机译:提出了一种新颖的图像分割模型,以提高现有分割方法的稳定性。在提出的模型中,我们向Mumford-Shah模型引入了两个因素,包括遮罩因子和邻域因子。首先,遮罩因子可以更准确地表达图像。因此,新的分割模型可以更真实地反映图像的结构。此外,邻域因子用于约束初始轮廓的演变。然后,通过级别设置功能将分割模型转换为等效形式。最后,可以基于偏微分方程和极值以简单的方式求解模型。实验结果表明,该方法能够生成准确的分割结果,并且该分割结果对初始轮廓和外界干扰(例如噪声和模糊)不敏感。

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