Distance Encoded Product Quantization for Approximate K-Nearest Neighbor Search in High-Dimensional Space.

IEEE Transactions on Pattern Analysis and Machine Intelligence(2019)

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摘要
Approximate K-nearest neighbor search is a fundamental problem in computer science. The problem is especially important for high-dimensional and large-scale data. Recently, many techniques encoding high-dimensional data to compact codes have been proposed. The product quantization and its variations that encode the cluster index in each subspace have been shown to provide impressive accuracy. In t...
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关键词
Distortion,Encoding,Indexes,Vector quantization,Search problems,Estimation
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