大规模图像集合中的索引:缩放属性和基准

M. Aly, Mario E. Munich, P. Perona
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引用次数: 73

摘要

在大量的图像集合中快速准确地索引已成为许多应用程序的一个重要问题。给定一个查询图像,目标是检索集合中的匹配图像。基于两种领先的方法:局部描述符匹配投票和视觉词直方图匹配投票,我们比较了七种不同方法的结构和性质,包括一些新方法。我们推导了内存和计算成本如何随数据库中图像数量的变化而变化的理论估计。我们在四个具有不同统计数据的真实数据集上对这些属性进行了经验评估。我们讨论了不同方法的优缺点,并提出了未来研究的方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Indexing in large scale image collections: Scaling properties and benchmark
Indexing quickly and accurately in a large collection of images has become an important problem with many applications. Given a query image, the goal is to retrieve matching images in the collection. We compare the structure and properties of seven different methods based on the two leading approaches: voting from matching of local descriptors vs. matching histograms of visual words, including some new methods. We derive theoretical estimates of how the memory and computational cost scale with the number of images in the database. We evaluate these properties empirically on four real-world datasets with different statistics. We discuss the pros and cons of the different methods and suggest promising directions for future research.
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