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Approximate Nearest Neighbor Search by Residual Vector Quantization

机译:残差矢量量化的近似最近邻搜索

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A recently proposed product quantization method is efficient for large scale approximate nearest neighbor search, however, its performance on unstructured vectors is limited. This paper introduces residual vector quantization based approaches that are appropriate for unstructured vectors. Database vectors are quantized by residual vector quantizer. The reproductions are represented by short codes composed of their quantization indices. Euclidean distance between query vector and database vector is approximated by asymmetric distance, i.e., the distance between the query vector and the reproduction of the database vector. An efficient exhaustive search approach is proposed by fast computing the asymmetric distance. A straight forward non-exhaustive search approach is proposed for large scale search. Our approaches are compared to two state-of-the-art methods, spectral hashing and product quantization, on both structured and unstructured datasets. Results show that our approaches obtain the best results in terms of the trade-off between search quality and memory usage.
机译:最近提出的乘积量化方法对于大规模近似最近邻居搜索是有效的,但是,其在非结构化向量上的性能受到限制。本文介绍了适用于非结构化矢量的基于残差矢量量化的方法。数据库矢量通过残差矢量量化器进行量化。再现用由其量化指标组成的短码表示。查询向量与数据库向量之间的欧氏距离可通过非对称距离(即查询向量与数据库向量的再现之间的距离)来近似。通过快速计算非对称距离,提出了一种有效的穷举搜索方法。提出了一种直接的非穷举搜索方法来进行大规模搜索。在结构化和非结构化数据集上,我们的方法均与两种最新方法(频谱哈希和乘积量化)进行了比较。结果表明,在搜索质量和内存使用之间的权衡方面,我们的方法获得了最佳结果。

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