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A Fast Continuous Max-Flow Approach to Non-convex Multi-labeling Problems

机译:快速连续最大流方法解决非凸多标签问题

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摘要

This paper studies continuous image labeling problems with an arbitrary data term and a total variation regularizer, where the labels are constrained to a finite set of real numbers. Inspired by Ishikawa's multi-layered graph construction for the same labeling problem over a discrete image domain, we propose a novel continuous max-flow model and build up its duality to a convex relaxed formulation of image labeling under a new variational perspective. Via such continuous max-flow formulations, we show that exact and global optimizers can be obtained to the original non-convex labeling problem. We also extend the studies to problems with continuous-valued labels and introduce a new theory to this problem. Finally, we show the proposed continuous max-flow models directly lead to new fast flow-maximization algorithmic schemes which outperform previous approaches in terms of efficiency. Such continuous max-flow based algorithms can be validated by convex optimization theories and accelerated by modern parallel computational hardware.
机译:本文研究了具有任意数据项和总变化量正则化器的连续图像标注问题,其中标注被约束为有限的实数集。受Ishikawa的多层图构造的启发,针对离散图像域上的相同标记问题,我们提出了一种新颖的连续最大流量模型,并将其对偶性建立到了新的变分视角下的图像标记的凸松弛形式。通过这种连续的最大流量公式,我们表明可以针对原始的非凸性标签问题获得精确的全局优化器。我们还将研究扩展到具有连续值标签的问题,并为该问题引入新的理论。最后,我们显示了所提出的连续最大流量模型直接导致了新的快速流量最大化算法方案,该方案在效率方面优于以前的方法。这种基于连续最大流的算法可以通过凸优化理论进行验证,并可以通过现代并行计算硬件进行加速。

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  • 会议地点 Dagstuhl Castle(DE)
  • 作者单位

    Department of Mathematics, University of California, Los Angeles, USA;

    Computer Science Department, Middlesex College, University of Western Ontario, London, ON, Canada;

    Department of Mathematics, University of Bereen, Bergen, Norway;

    Computer Science Department, Middlesex College, University of Western Ontario, London, ON, Canada;

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  • 正文语种 eng
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