We contribute to approximate algorithms for the quadratic assignment problem also known as graph matching. Inspired by the success of the fusion moves technique developed for multilabel discrete Markov random fields, we investigate its applicability to graph matching. In particular, we show how it can be efficiently combined with the dedicated state-of-the-art Lagrange dual methods that have recently shown superior results in computer vision and bio-imaging applications. As our empirical evaluation on a wide variety of graph matching datasets suggests, fusion moves notably improve performance of these methods in terms of speed and quality of the obtained solutions. Hence, this combination results in a state-of-the-art solver for graph matching.
翻译:我们为二次分配问题的近似算法作出了贡献,这种算法也称为图形匹配。在为多标签离散的Markov随机字段开发的聚变移动技术的成功激励下,我们调查其对图形匹配的适用性。特别是,我们展示了如何有效地将其与最近显示计算机视觉和生物成像应用方面优异结果的最先进的拉格朗双轨方法结合起来。正如我们对各种图表匹配数据集的经验评估所显示的那样,聚变在获得的解决方案的速度和质量方面显著改进了这些方法的性能。因此,这种组合的结果是,一个最先进的图表匹配解算器。