There has been growing interest in mapping image data onto compact binary codes for fast near neighbor search in vision applications. Although binary codes are motivated by their use as direct indices (addresses) into a hash ta-ble, codes longer than 32 bits are not being used in this way, as it was thought to be ineffective. We introduce a rigorous way to build multiple hash tables on binary code substrings that enables exact K-nearest neighbor search in Hamming space. The algorithm is straightforward to im-plement, storage efficient, and it has sub-linear run-time behavior for uniformly distributed codes. Empirical results show dramatic speed-ups over a linear scan baseline and for datasets with up to one billion items, 64- or 128-bit cod...
© 1992-2012 IEEE. Hashing methods have been widely investigated for fast approximate nearest neighbo...
Hashing is used to learn binary-code representation for data with expectation of preserving the neig...
Hashing is one of the effective techniques for fast Approximate Nearest Neighbour (ANN) search. Trad...
There is growing interest in representing image data and feature descriptors using compact binary co...
Abstract—There is growing interest in representing image data and feature descriptors using compact ...
This paper addresses the problem of ultra-large-scale search in Hamming spaces. There has been consi...
Numerous applications in search, databases, machine learning, and computer vision, can benefit from...
Abstract Algorithms to rapidly search massive image or video collections are crit-ical for many visi...
We consider the problem of indexing a text T (of length n) with a light data structure that supports...
International audienceHandling large amounts of data, such as large image databases, requires the us...
Similarity preserving hashing can aid forensic investigations by providing means to recognize known ...
Binary hashing has been widely used for efficient simi-larity search due to its query and storage ef...
The space-partitioning based hashing techniques are widely used to represent high-dimensional data p...
Binary hashing has been widely used for efficient simi-larity search due to its query and storage ef...
Compact locally aggregated binary features have shown great advantages in image search. As the exhau...
© 1992-2012 IEEE. Hashing methods have been widely investigated for fast approximate nearest neighbo...
Hashing is used to learn binary-code representation for data with expectation of preserving the neig...
Hashing is one of the effective techniques for fast Approximate Nearest Neighbour (ANN) search. Trad...
There is growing interest in representing image data and feature descriptors using compact binary co...
Abstract—There is growing interest in representing image data and feature descriptors using compact ...
This paper addresses the problem of ultra-large-scale search in Hamming spaces. There has been consi...
Numerous applications in search, databases, machine learning, and computer vision, can benefit from...
Abstract Algorithms to rapidly search massive image or video collections are crit-ical for many visi...
We consider the problem of indexing a text T (of length n) with a light data structure that supports...
International audienceHandling large amounts of data, such as large image databases, requires the us...
Similarity preserving hashing can aid forensic investigations by providing means to recognize known ...
Binary hashing has been widely used for efficient simi-larity search due to its query and storage ef...
The space-partitioning based hashing techniques are widely used to represent high-dimensional data p...
Binary hashing has been widely used for efficient simi-larity search due to its query and storage ef...
Compact locally aggregated binary features have shown great advantages in image search. As the exhau...
© 1992-2012 IEEE. Hashing methods have been widely investigated for fast approximate nearest neighbo...
Hashing is used to learn binary-code representation for data with expectation of preserving the neig...
Hashing is one of the effective techniques for fast Approximate Nearest Neighbour (ANN) search. Trad...