基于L0正则化Mumford-Shah模型的同时偏差校正和图像分割

Y. Duan, Huibin Chang, Weimin Huang, Jiayin Zhou
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引用次数: 13

摘要

本文提出了一种新的离散Mumford-Shah模型,用于强度不均匀图像的同时偏差校正和图像分割(SBCIS)。该模型是基于这样一个假设,即图像可以近似为真实强度和偏置场的乘积。与现有的方法不同,在现有方法中,真实强度被表示为分割区域特征函数的线性组合,我们使用L0梯度最小化来强制分段常数解。我们在Mumford-Shah模型中引入了一个新的邻居项,以允许像素的真实强度受到其直接邻居的影响。对所提出的Mumford-Shah模型采用了两阶段分割方法。在第一阶段,获得真实强度和偏置场,在第二阶段,使用K-means聚类方法进行分割。与两阶段Mumford-Shah模型的比较表明,我们的方法在分割具有强度不均匀性的图像方面具有优势。
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Simultaneous bias correction and image segmentation via L0 regularized Mumford-Shah model
This paper presents a novel discrete Mumford-Shah model for the simultaneous bias correction and image segmentation(SBCIS) for images with intensity inhomogeneity. The model is based on the assumption that an image can be approximated by a product of true intensities and a bias field. Unlike the existing methods, where the true intensities are represented as a linear combination of characteristic functions of segmentation regions, we employ L0 gradient minimization to enforce a piecewise constant solution. We introduce a new neighbor term into the Mumford-Shah model to allow the true intensity of a pixel to be influenced by its immediate neighborhood. A two-stage segmentation method is applied to the proposed Mumford-Shah model. In the first stage, both the true intensities and bias field are obtained while the segmentation is done using the K-means clustering method in the second stage. Comparisons with the two-stage Mumford-Shah model show the advantages of our method in its ability in segmenting images with intensity inhomogeneity.
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