FANNG: Fast Approximate Nearest Neighbour Graphs

Ben Harwood, T. Drummond
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引用次数: 87

Abstract

We present a new method for approximate nearest neighbour search on large datasets of high dimensional feature vectors, such as SIFT or GIST descriptors. Our approach constructs a directed graph that can be efficiently explored for nearest neighbour queries. Each vertex in this graph represents a feature vector from the dataset being searched. The directed edges are computed by exploiting the fact that, for these datasets, the intrinsic dimensionality of the local manifold-like structure formed by the elements of the dataset is significantly lower than the embedding space. We also provide an efficient search algorithm that uses this graph to rapidly find the nearest neighbour to a query with high probability. We show how the method can be adapted to give a strong guarantee of 100% recall where the query is within a threshold distance of its nearest neighbour. We demonstrate that our method is significantly more efficient than existing state of the art methods. In particular, our GPU implementation can deliver 90% recall for queries on a data set of 1 million SIFT descriptors at a rate of over 1.2 million queries per second on a Titan X. Finally we also demonstrate how our method scales to datasets of 5M and 20M entries.
快速近似近邻图
提出了一种基于SIFT或GIST描述符的高维特征向量大数据集的近似近邻搜索方法。我们的方法构建了一个有向图,可以有效地探索最近邻查询。图中的每个顶点表示正在搜索的数据集中的一个特征向量。有向边的计算是利用这样一个事实:对于这些数据集,数据集元素形成的局部流形结构的固有维数明显低于嵌入空间。我们还提供了一种高效的搜索算法,该算法使用该图以高概率快速找到查询的最近邻居。我们展示了如何调整该方法,以在查询与其最近邻居的阈值距离内提供100%召回的强有力保证。我们证明,我们的方法明显比现有的最先进的方法更有效。特别是,我们的GPU实现可以在Titan x上以每秒超过120万次查询的速度在100万个SIFT描述符的数据集上提供90%的查询召回率。最后,我们还演示了我们的方法如何扩展到5M和20M条目的数据集。
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