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Sublabel-Accurate Convex Relaxation of Vectorial Multilabel Energies

机译:向量多标签能量的亚标签精确凸松弛

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Convex relaxations of multilabel problems have been demonstrated to produce provably optimal or near-optimal solutions to a variety of computer vision problems. Yet, they are of limited practical use as they require a fine discretization of the label space, entailing a huge demand in memory and runtime. In this work, we propose the first sublabel accurate convex relaxation for vectorial multilabel problems. Our key idea is to approximate the dataterm in a piecewise convex (rather than piecewise linear) manner. As a result we have a more faithful approximation of the original cost function that provides a meaningful interpretation for fractional solutions of the relaxed convex problem.
机译:多标签问题的凸松弛已被证明可以为各种计算机视觉问题提供可证明的最优或接近最优的解决方案。然而,由于它们需要标签空间的精细离散化,因此它们在实际应用中受到限制,这导致对内存和运行时间的巨大需求。在这项工作中,我们提出了向量多标签问题的第一个子标签精确凸松弛。我们的关键思想是以分段凸(而不是分段线性)的方式近似数据项。结果,我们对原始成本函数有了更真实的近似,从而为松弛凸问题的分数解提供了有意义的解释。

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