A Multiscale Variable-Grouping Framework for MRF Energy Minimization

Omer Meir, M. Galun, Stav Yagev, R. Basri, I. Yavneh
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引用次数: 1

Abstract

We present a multiscale approach for minimizing the energy associated with Markov Random Fields (MRFs) with energy functions that include arbitrary pairwise potentials. The MRF is represented on a hierarchy of successively coarser scales, where the problem on each scale is itself an MRF with suitably defined potentials. These representations are used to construct an efficient multiscale algorithm that seeks a minimal-energy solution to the original problem. The algorithm is iterative and features a bidirectional crosstalk between fine and coarse representations. We use consistency criteria to guarantee that the energy is nonincreasing throughout the iterative process. The algorithm is evaluated on real-world datasets, achieving competitive performance in relatively short run-times.
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MRF能量最小化的多尺度变量分组框架
我们提出了一种多尺度方法,用于最小化与包含任意成对势的能量函数的马尔可夫随机场(mrf)相关的能量。MRF被表示在一个连续较粗尺度的层次结构上,其中每个尺度上的问题本身就是一个具有适当定义的势的MRF。这些表示用于构建一个高效的多尺度算法,该算法寻求原始问题的最小能量解。该算法是迭代的,并且具有精细和粗糙表示之间的双向串扰。我们使用一致性准则来保证在整个迭代过程中能量不增加。该算法在真实世界的数据集上进行了评估,在相对较短的运行时间内实现了具有竞争力的性能。
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