Fast Matching of Binary Features

Marius Muja, D. Lowe
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引用次数: 317

Abstract

There has been growing interest in the use of binary-valued features, such as BRIEF, ORB, and BRISK for efficient local feature matching. These binary features have several advantages over vector-based features as they can be faster to compute, more compact to store, and more efficient to compare. Although it is fast to compute the Hamming distance between pairs of binary features, particularly on modern architectures, it can still be too slow to use linear search in the case of large datasets. For vector-based features, such as SIFT and SURF, the solution has been to use approximate nearest-neighbor search, but these existing algorithms are not suitable for binary features. In this paper we introduce a new algorithm for approximate matching of binary features, based on priority search of multiple hierarchical clustering trees. We compare this to existing alternatives, and show that it performs well for large datasets, both in terms of speed and memory efficiency.
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二值特征的快速匹配
人们对使用二元值特征(如BRIEF、ORB和BRISK)进行高效的局部特征匹配越来越感兴趣。与基于向量的特征相比,这些二进制特征有几个优点,因为它们可以更快地计算,更紧凑地存储,并且更有效地进行比较。虽然计算二元特征对之间的汉明距离很快,特别是在现代架构上,但在大型数据集的情况下,使用线性搜索仍然太慢。对于SIFT和SURF等基于向量的特征,目前的解决方案是使用近似最近邻搜索,但这些现有的算法并不适合二值特征。本文提出了一种基于多层次聚类树优先级搜索的二值特征近似匹配算法。我们将其与现有的替代方案进行比较,并表明它在速度和内存效率方面都能很好地处理大型数据集。
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