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Approximate MRF Inference Using Bounded Treewidth Subgraphs

机译:使用有界树宽子图进行近似MRF推断

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Graph cut algorithms [9], commonly used in computer vision, solve a first-order MRF over binary variables. The state of the art for this NP-hard problem is QPBO [1,2], which finds the values for a subset of the variables in the global minimum. While QPBO is very effective overall there are still many difficult problems where it can only label a small subset of the variables. We propose a new approach that, instead of optimizing the original graphical model, instead optimizes a tractable sub-model, defined as an energy function that uses a subset of the pairwise interactions of the original, but for which exact inference can be done efficiently. Our Bounded Treewidth Subgraph (k-BTS) algorithm greedily computes a large weight treewidth-k subgraph of the signed graph, then solves the energy minimization problem for this subgraph by dynamic programming. The edges omitted by our greedy method provide a per-instance lower bound. We demonstrate promising experimental results for binary deconvolution, a challenging problem used to benchmark QPBO [2]: our algorithm performs an order of magnitude better than QPBO or its common variants [4], both in terms of energy and accuracy, and the visual quality of our output is strikingly better as well. We also obtain a significant improvement in energy and accuracy on a stereo benchmark with 2nd order priors [5], although the improvement in visual quality is more modest. Our method's running time is comparable to QPBO.
机译:通常在计算机视觉中使用的图割算法[9]解决二进制变量上的一阶MRF。 NP难题的最新技术是QPBO [1,2],它可以找到全局最小值中变量子集的值。虽然QPBO总体上非常有效,但是仍然存在许多困难的问题,它只能标记变量的一小部分。我们提出了一种新的方法,而不是优化原始的图形模型,而是优化了易处理的子模型,该子模型定义为使用原始函数对的子集的能量函数,但可以有效地进行精确推断。我们的有界树宽子图(k-BTS)算法会贪婪地计算签名图的大权重树宽-k子图,然后通过动态编程解决该子图的能量最小化问题。我们的贪婪方法忽略的边缘提供了每个实例的下限。我们证明了二进制反卷积的有希望的实验结果,这是一个用于QPBO基准测试的挑战性问题:我们的算法在能量,准确性和视觉质量方面都比QPBO或其常见变体[4]好一个数量级。我们的产出也显着提高。尽管视觉质量的改善较为适度,但我们在二阶先验[5]的立体声基准上也获得了能量和准确性的显着改善。我们方法的运行时间与QPBO相当。

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