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Generalized roof duality for pseudo-boolean optimization

机译:用于伪布尔优化的广义屋顶对偶

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摘要

The number of applications in computer vision that model higher-order interactions has exploded over the last few years. The standard technique for solving such problems is to reduce the higher-order objective function to a quadratic pseudo-boolean function, and then use roof duality for obtaining a lower bound. Roof duality works by constructing the tightest possible lower-bounding submodular function, and instead of optimizing the original objective function, the relaxation is minimized. We generalize this idea to polynomials of higher degree, where quadratic roof duality appears as a special case. Optimal relaxations are defined to be the ones that give the maximum lower bound. We demonstrate that important properties such as persistency still hold and how the relaxations can be efficiently constructed for general cubic and quartic pseudo-boolean functions. From a practical point of view, we show that our relaxations perform better than state-of-the-art for a wide range of problems, both in terms of lower bounds and in the number of assigned variables.
机译:在最近几年中,计算机视觉中用于建模高阶交互的应用程序数量激增。解决此类问题的标准技术是将高阶目标函数简化为二次伪布尔函数,然后使用屋顶对偶性获得下界。屋顶对偶性通过构造尽可能紧密的下界子模函数来工作,而不是优化原始目标函数,而是将松弛最小化。我们将此想法推广到更高阶的多项式,在这种情况下,二次屋顶对偶性是特例。最佳松弛定义为给出最大下限的松弛。我们证明了诸如持久性之类的重要属性仍然保持不变,并且对于一般的三次和四次伪布尔函数,如何有效地构造松弛。从实践的角度来看,我们表明,在下限和分配变量的数量上,我们的松弛在各种问题上的表现都优于最新技术。

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