Image matching is a classic and fundamental task in computer vision. In this paper, under the hypothesis that the areas outside the co-visible regions carry little information, we propose a matching key-points crop (MKPC) algorithm. The MKPC locates, proposes and crops the critical regions, which are the co-visible areas with great efficiency and accuracy. Furthermore, building upon MKPC, we propose a general two-stage pipeline for image matching, which is compatible to any image matching models or combinations. We experimented with plugging SuperPoint + SuperGlue into the two-stage pipeline, whose results show that our method enhances the performance for outdoor pose estimations. What's more, in a fair comparative condition, our method outperforms the SOTA on Image Matching Challenge 2022 Benchmark, which represents the hardest outdoor benchmark of image matching currently.
翻译:图像匹配是计算机视觉中经典而基础的任务。在本文中,我们在假设共可见区域外的区域所携带的信息很少的基础上,提出了一种匹配关键点裁剪(MKPC)算法。MKPC具有高效而准确的特点,能够定位、提出和裁剪关键区域,即共可见区域。此外,建立在MKPC之上,我们提出了一种通用的图像匹配两阶段流程,它适用于任何图像匹配模型或组合。我们实验了SuperPoint + SuperGlue的插入到这个两阶段流水线中,其结果表明我们的方法可以增强户外位姿估计的性能。更重要的是,在公平比较的条件下,我们的方法在2022年图像匹配挑战赛Benchmark上胜过当前最难的户外图像匹配的最先进技术。