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Fast approximate energy minimization with label costs

机译:快速降低能耗,并节省标签成本

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The α-expansion algorithm [4] has had a significant impact in computer vision due to its generality, effectiveness, and speed. Thus far it can only minimize energies that involve unary, pairwise, and specialized higher-order terms. Our main contribution is to extend α-expansion so that it can simultaneously optimize “label costs” as well. An energy with label costs can penalize a solution based on the set of labels that appear in it. The simplest special case is to penalize the number of labels in the solution. Our energy is quite general, and we prove optimality bounds for our algorithm. A natural application of label costs is multi-model fitting, and we demonstrate several such applications in vision: homography detection, motion segmentation, and unsupervised image segmentation. Our C++/MATLAB implementation is publicly available.
机译:α扩展算法[4]由于其通用性,有效性和速度而对计算机视觉产生了重大影响。到目前为止,它只能使涉及一元,成对和专门的高阶项的能量最小化。我们的主要贡献是扩展α扩展,以便它可以同时优化“标签成本”。带有标签成本的能源可能会根据其中出现的一组标签来惩罚解决方案。最简单的特殊情况是惩罚解决方案中的标签数量。我们的能量非常笼统,我们证明了算法的最优边界。标签成本的自然应用是多模型拟合,并且我们演示了视觉中的几种此类应用:单应性检测,运动分割和无监督图像分割。我们的C ++ / MATLAB实现是公开可用的。

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