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首页> 外文期刊>Journal of mathematical imaging and vision >A Novel Euler's Elastica-Based Segmentation Approach for Noisy Images Using the Progressive Hedging Algorithm
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A Novel Euler's Elastica-Based Segmentation Approach for Noisy Images Using the Progressive Hedging Algorithm

机译:一种新的欧拉基于Elastica的基于Elastica的分割方法,用于使用逐步对冲算法的嘈杂图像

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摘要

Euler's elastica-based unsupervised segmentation models have strong capability of completing the missing boundaries for existing objects in a clean image, but they are not working well for noisy images. This paper aims to establish a Euler's elastica-based approach that can properly deal with the random noises to improve the segmentation performance for noisy images. The corresponding formulation of stochastic optimization is solved via the progressive hedging algorithm (PHA), and the description of each individual scenario is obtained by the alternating direction method of multipliers. Technically, all the sub-problems derived from the framework of PHA can be solved by using the curvature-weighted approach and the convex relaxation method. Then, an alternating optimization strategy is applied by using some powerful accelerating techniques including the fast Fourier transform and generalized soft threshold formulas. Extensive experiments have been conducted on both synthetic and real images, which displayed significant gains of the proposed segmentation models and demonstrated the advantages of the developed algorithms.
机译:Euler的基于Elastica的无监督分割模型具有很强的能力,可以完成清洁图像中现有对象的缺失边界,但它们不适用于嘈杂的图像。本文旨在建立欧拉的Elastica的方法,可以正确处理随机噪声,以改善嘈杂图像的分割性能。通过渐进的对冲算法(PHA)求解随机优化的相应配方,并且通过乘法器的交替方向方法获得每个单独场景的描述。从技术上讲,通过使用曲率加权方法和凸松弛方法可以解决从PHA框架的所有子问题。然后,通过使用包括快速傅里叶变换和广义软阈值公式的一些强大的加速技术来应用交替优化策略。在合成和真实图像上进行了广泛的实验,其显示了所提出的分割模型的显着增益,并展示了发达算法的优势。

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