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首页> 外文期刊>Research Letters in Signal Processing >A Markov Random Field and Adaptive Regularization Embedded Level Set Segmentation Model Solving by Graph Cuts
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A Markov Random Field and Adaptive Regularization Embedded Level Set Segmentation Model Solving by Graph Cuts

机译:Markov随机字段和自适应正则化嵌入式级别设置分割模型通过图形切割解决

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摘要

This paper presents a novel Markov random field (MRF) and adaptive regularization embedded level set model for robust image segmentation and uses graph cuts optimization to numerically solve it. Firstly, a special MRF-based energy term in the form of level set formulation is constructed for strong local neighborhood modeling. Secondly, a regularization constraint with adaptive properties is imposed onto the proposed model with the following purposes: reduce the influence of noise, force the power exponent of the regularization process to change adaptively with image coordinates, and ensure the active contour does not pass through the weak object boundaries. Thirdly, graph cuts optimization is used to implement the numerical solution of the proposed model to obtain extremely fast convergence performance. The extensive and promising experimental results on wide variety of images demonstrate the excellent performance of the proposed method in both segmentation accuracy and convergence rate.
机译:本文提出了一种新颖的马尔可夫随机场(MRF)和自适应正则化嵌入式级别设置模型,用于鲁棒图像分割,并使用图表削减优化来数值解决。首先,为强大的局部邻域建模构建了级别集制剂形式的基于特殊的MRF的能量术语。其次,通过以下目的施加对所提出的模型的正则化约束:降低噪声的影响,强制正则化过程的功率指数以自适应地改变图像坐标,并确保活动轮廓不会通过弱对象边界。第三,图表切割优化用于实现所提出的模型的数值解决方案,以获得极快的收敛性能。各种各样的图像的广泛和有希望的实验结果证明了在分割精度和收敛速率中提出的方法的优异性能。

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