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LogCut - Efficient Graph Cut Optimization for Markov Random Fields

机译:LogCut - Markov随机字段的高效图形裁员优化

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Markov Random Fields (MRFs) are ubiquitous in low-level computer vision. In this paper, we propose a new approach to the optimization of multi-labeled MRFs. Similarly to α-expansion it is based on iterative application of binary graph cut. However, the number of binary graph cuts required to compute a labeling grows only logarithmically with the size of label space, instead of linearly. We demonstrate that for applications such as optical flow, image restoration, and high resolution stereo, this gives an order of magnitude speed-up, for comparable energies. Iterations are performed by "fusion" of solutions, done with QPBO which is related to graph cut but can deal with non-submodularity. At convergence, the method achieves optima on a par with the best competitors, and sometimes even exceeds them.
机译:马尔可夫随机字段(MRFS)在低级计算机视觉中普遍存在。在本文中,我们提出了一种新的多标记MRFS的优化方法。类似于α-扩展,它基于二进制图切割的迭代应用。然而,计算标签所需的二进制图剪切的数量仅使用标签空间的大小而不是线性地进行对数进行对数进行对数进行对数。我们证明,对于诸如光学流,图像恢复和高分辨率立体声的应用,这给出了相当能量的幅度加速阶数。迭代由“融合”解决方案,与QPBO进行,与图形切割有关,但可以处理非潜水性。在收敛时,该方法实现了与最佳竞争对手的PAR的Optima,有时甚至超过它们。

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