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首页> 外文期刊>SIAM Journal on Scientific Computing >LINKAGE BETWEEN PIECEWISE CONSTANT MUMFORD-SHAH MODEL AND RUDIN-OSHER-FATEMI MODEL AND ITS VIRTUE IN IMAGE SEGMENTATION
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LINKAGE BETWEEN PIECEWISE CONSTANT MUMFORD-SHAH MODEL AND RUDIN-OSHER-FATEMI MODEL AND ITS VIRTUE IN IMAGE SEGMENTATION

机译:分段恒定Mumford-Shah模型与Rudin-Osher-Fatemi模型的联系及其在图像分割中的美德

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摘要

The piecewise constant Mumford-Shah (PCMS) model and the Rudin-Osher-Fatemi (ROF) model are two important variational models in image segmentation and image restoration, respectively. In this paper, we explore a linkage between these models. We prove that for the two-phase segmentation problem a partial minimizer of the PCMS model can be obtained by thresholding the minimizer of the ROF model. A similar linkage is still valid for multiphase segmentation under specific assumptions. Thus it opens a new segmentation paradigm: image segmentation can be done via image restoration plus thresholding. This new paradigm, which circumvents the innate nonconvex property of the PCMS model, therefore, improves the segmentation performance in both efficiency (much faster than state-of-the-art methods based on the PCMS model, particularly when the phase number is high)the and effectiveness (producing segmentation results with better quality) due to the flexibility of the ROF model in tackling degraded images, such as noisy images, blurry images, or images with information loss. As a by-product of the new paradigm, we derive a novel segmentation method, called thresholded-ROF (T-ROF) method, to illustrate the virtue of managing image segmentation through image restoration techniques. The convergence of the T-ROF method is proved, and elaborate experimental results and comparisons are presented.
机译:分段恒定的Mumford-Shah(PCMS)模型和Rudin-Osher-Fatemi(Rof)模型分别是图像分割和图像恢复中的两个重要变分模型。在本文中,我们探索了这些模型之间的联系。我们证明,对于两相分割问题,可以通过阈值计算ROF模型的最小化器来获得PCMS模型的部分最小值。在特定假设下,类似的连锁仍然适用于多相分割。因此,它打开一个新的分段范例:可以通过映像恢复加阈值处理来完成图像分割。因此,这种新的范例,因此,避免了PCMS模型的先天非渗透性,从而提高了效率的分段性能(比基于PCMS模型的最先进方法快得多,特别是当相位数高)由于ROF模型在处理降级的图像中的灵活性,例如噪声图像,模糊图像或具有信息丢失的图像,因此有效地(产生细分结果)作为新范式的副产物,我们推出了一种新的分割方法,称为阈值-ROF(T-ROF)方法,以说明通过图像恢复技术管理图像分割的优点。证明了T-ROF方法的收敛性,并提出了详细的实验结果和比较。

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