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Match Graph Construction for Large Image Databases

机译:大型图像数据库的匹配图构造

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How best to efficiently establish correspondence among a large set of images or video frames is an interesting unanswered question. For large databases, the high computational cost of performing pair-wise image matching is a major problem. However, for many applications, images are inherently sparsely connected, and so current techniques try to correctly estimate small potentially matching subsets of databases upon which to perform expensive pair-wise matching. Our contribution is to pose the identification of potential matches as a link prediction problem in an image correspondence graph, and to propose an effective algorithm to solve this problem. Our algorithm facilitates incremental image matching: initially, the match graph is very sparse, but it becomes dense as we alternate between link prediction and verification. We demonstrate the effectiveness of our algorithm by comparing it with several existing alternatives on large-scale databases. Our resulting match graph is useful for many different applications. As an example, we show the benefits of our graph construction method to a label propagation application which propagates user-provided sparse object labels to other instances of that object in large image collections.
机译:如何最好地有效地建立大量图像或视频帧之间的对应关系是一个有趣的未解决的问题。对于大型数据库,执行成对图像匹配的高计算成本是一个主要问题。但是,对于许多应用程序,图像本质上是稀疏连接的,因此,当前的技术试图正确估计数据库中小的潜在匹配子集,在这些子集上执行昂贵的成对匹配。我们的贡献是将潜在匹配的识别作为图像对应图中的链接预测问题,并提出一种有效的算法来解决该问题。我们的算法有利于增量图像匹配:最初,匹配图非常稀疏,但随着我们在链接预测和验证之间交替使用,匹配图变得很密集。通过与大型数据库中的几种现有替代方案进行比较,我们证明了该算法的有效性。我们得出的匹配图可用于许多不同的应用程序。例如,我们将图形构造方法的好处展示给标签传播应用程序,该应用程序将用户提供的稀疏对象标签传播到大型图像集合中该对象的其他实例。

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