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GraphMatch: Efficient Large-Scale Graph Construction for Structure from Motion

机译:GraphMatch:有效的运动构造大规模图形

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We present GraphMatch, an approximate yet efficient method for building the matching graph for large-scale structure-from-motion~(SfM) pipelines. GraphMatch leverages two priors that can predict which image pairs are likely to match, thereby making the matching process for SfM much more efficient. The first is a score computed from the distance between the Fisher vectors of any two images. The second prior is based on the graph distance between vertices in the underlying matching graph. GraphMatch combines these two priors into an iterative ``sample-and-propagate'' scheme similar to the PatchMatch algorithm. Its sampling stage uses Fisher similarity priors to guide the search for matching image pairs, while its propagation stage explores neighbors of matched pairs to find new ones with a high image similarity score. Our experiments show that GraphMatch finds the most image pairs as compared to competing, approximate methods while at the same time being the most efficient.
机译:我们提出了GraphMatch,这是一种用于构建大型结构从运动〜(SfM)管道的匹配图的近似而有效的方法。 GraphMatch利用两个先验可预测哪些图像对可能匹配,从而使SfM的匹配过程更加高效。第一个是从任何两个图像的Fisher向量之间的距离计算出的分数。第二个先验是基于基础匹配图中顶点之间的图距离的。 GraphMatch将这两个先验组合到一个类似于PatchMatch算法的迭代``采样和传播''方案中。它的采样阶段使用Fisher相似性先验来指导搜索匹配的图像对,而其传播阶段则探索匹配对的邻居,以找到具有较高图像相似性得分的新图像对。我们的实验表明,与竞争性近似方法相比,GraphMatch查找最多的图像对,同时效率最高。

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