Hashing is one of the effective techniques for fast Approximate Nearest Neighbour (ANN) search. Traditional single-bit quantization (SBQ) in most hashing methods incurs lots of quantization error which seriously degrades the search performance. To address the limitation of SBQ, researchers have proposed promising multi-bit quantization (MBQ) methods to quantize each projection dimension with multiple bits. However, some MBQ methods need to adopt specific distance for binary code matching instead of the original Hamming distance, which would significantly decrease the retrieval speed. Two typical MBQ methods Hierarchical Quantization and Double Bit Quantization retain the Hamming distance, but both of them only consider the projection dimens...
Abstract—There is growing interest in representing image data and feature descriptors using compact ...
Cross-modal hashing is designed to facilitate fast search across domains. In this work, we present a...
In computer vision there has been increasing interest in learning hashing codes whose Hamming distan...
Hashing techniques are powerful for approximate nearest neighbour (ANN) search.Existing quantization...
Hashing is used to learn binary-code representation for data with expectation of preserving the neig...
Nowadays, due to the exponential growth of user generated images and videos, there is an increasing ...
There has been growing interest in mapping image data onto compact binary codes for fast near neighb...
Hashing learning is efficient for large-scale image retrieval by using the nearest neighbor search w...
International audienceHandling large amounts of data, such as large image databases, requires the us...
Hashing has recently attracted considerable attention for large scale similarity search. However, le...
© 1979-2012 IEEE. Nearest neighbor search is a problem of finding the data points from the database ...
This paper addresses the problem of ultra-large-scale search in Hamming spaces. There has been consi...
There is growing interest in representing image data and feature descriptors using compact binary co...
© 1992-2012 IEEE. Hashing has been proved an attractive technique for fast nearest neighbor search o...
Abstract—In information retrieval, efficient accomplishing the nearest neighbor search on large scal...
Abstract—There is growing interest in representing image data and feature descriptors using compact ...
Cross-modal hashing is designed to facilitate fast search across domains. In this work, we present a...
In computer vision there has been increasing interest in learning hashing codes whose Hamming distan...
Hashing techniques are powerful for approximate nearest neighbour (ANN) search.Existing quantization...
Hashing is used to learn binary-code representation for data with expectation of preserving the neig...
Nowadays, due to the exponential growth of user generated images and videos, there is an increasing ...
There has been growing interest in mapping image data onto compact binary codes for fast near neighb...
Hashing learning is efficient for large-scale image retrieval by using the nearest neighbor search w...
International audienceHandling large amounts of data, such as large image databases, requires the us...
Hashing has recently attracted considerable attention for large scale similarity search. However, le...
© 1979-2012 IEEE. Nearest neighbor search is a problem of finding the data points from the database ...
This paper addresses the problem of ultra-large-scale search in Hamming spaces. There has been consi...
There is growing interest in representing image data and feature descriptors using compact binary co...
© 1992-2012 IEEE. Hashing has been proved an attractive technique for fast nearest neighbor search o...
Abstract—In information retrieval, efficient accomplishing the nearest neighbor search on large scal...
Abstract—There is growing interest in representing image data and feature descriptors using compact ...
Cross-modal hashing is designed to facilitate fast search across domains. In this work, we present a...
In computer vision there has been increasing interest in learning hashing codes whose Hamming distan...