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Product Quantization for Nearest Neighbor Search

Published: 01 January 2011 Publication History

Abstract

This paper introduces a product quantization-based approach for approximate nearest neighbor search. The idea is to decompose the space into a Cartesian product of low-dimensional subspaces and to quantize each subspace separately. A vector is represented by a short code composed of its subspace quantization indices. The euclidean distance between two vectors can be efficiently estimated from their codes. An asymmetric version increases precision, as it computes the approximate distance between a vector and a code. Experimental results show that our approach searches for nearest neighbors efficiently, in particular in combination with an inverted file system. Results for SIFT and GIST image descriptors show excellent search accuracy, outperforming three state-of-the-art approaches. The scalability of our approach is validated on a data set of two billion vectors.

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cover image IEEE Transactions on Pattern Analysis and Machine Intelligence
IEEE Transactions on Pattern Analysis and Machine Intelligence  Volume 33, Issue 1
January 2011
209 pages

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IEEE Computer Society

United States

Publication History

Published: 01 January 2011

Author Tags

  1. High-dimensional indexing
  2. High-dimensional indexing, image indexing, very large databases, approximate search.
  3. approximate search.
  4. image indexing
  5. very large databases

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