Hashing has been proven a promising technique for fast nearest neighbor search over massive databases. In many practical tasks it usually builds multiple hash tables for a desired level of recall performance. However, existing multi-table hashing methods suffer from the heavy table redundancy, without strong table complementarity and effective hash code learning. To address the problem, this paper proposes a multi-table learning method which pursues a specified number of complementary and informative hash tables from a perspective of ensemble learning. By regarding each hash table as a neighbor prediction model, the multi-table search procedure boils down to a linear assembly of predictions stemming from multiple tables. Therefore, a sequen...
Hashing has been widely researched to solve the large-scale approximate nearest neighbor search prob...
Learning to hash is receiving increasing research attention due to its effectiveness in addressing t...
Recently, hashing techniques have been widely applied to solve the approximate nearest neighbors sea...
Recent years have witnessed the success of binary hashing techniques in approximate nearest neighbor...
Recently, hashing based Approximate Nearest Neighbor (ANN) techniques have been attracting lots of a...
Recent years have witnessed the success of hashingtechniques in approximate nearest neighbor search....
© 1992-2012 IEEE. Hash-based nearest neighbor search has become attractive in many applications. How...
© 1992-2012 IEEE. Hashing has been proved an attractive technique for fast nearest neighbor search o...
Fast nearest neighbor searching is becoming an increasingly important tool in solving many large-sca...
The era of big data has spawned unprecedented interests in developing hashing algorithms for their s...
Nearest neighbor search methods based on hashing have attracted considerable attention for effective...
Hashing methods aim to learn a set of hash functions which map the original features to compact bina...
© 2017, Springer Science+Business Media New York. Hashing methods aim to learn a set of hash functio...
Similarity search is a key problem in many real world applications including image and text retrieva...
© 1979-2012 IEEE. Nearest neighbor search is a problem of finding the data points from the database ...
Hashing has been widely researched to solve the large-scale approximate nearest neighbor search prob...
Learning to hash is receiving increasing research attention due to its effectiveness in addressing t...
Recently, hashing techniques have been widely applied to solve the approximate nearest neighbors sea...
Recent years have witnessed the success of binary hashing techniques in approximate nearest neighbor...
Recently, hashing based Approximate Nearest Neighbor (ANN) techniques have been attracting lots of a...
Recent years have witnessed the success of hashingtechniques in approximate nearest neighbor search....
© 1992-2012 IEEE. Hash-based nearest neighbor search has become attractive in many applications. How...
© 1992-2012 IEEE. Hashing has been proved an attractive technique for fast nearest neighbor search o...
Fast nearest neighbor searching is becoming an increasingly important tool in solving many large-sca...
The era of big data has spawned unprecedented interests in developing hashing algorithms for their s...
Nearest neighbor search methods based on hashing have attracted considerable attention for effective...
Hashing methods aim to learn a set of hash functions which map the original features to compact bina...
© 2017, Springer Science+Business Media New York. Hashing methods aim to learn a set of hash functio...
Similarity search is a key problem in many real world applications including image and text retrieva...
© 1979-2012 IEEE. Nearest neighbor search is a problem of finding the data points from the database ...
Hashing has been widely researched to solve the large-scale approximate nearest neighbor search prob...
Learning to hash is receiving increasing research attention due to its effectiveness in addressing t...
Recently, hashing techniques have been widely applied to solve the approximate nearest neighbors sea...