Authors
Hao Xu, Jingdong Wang, Zhu Li, Gang Zeng, Shipeng Li, Nenghai Yu
Publication date
2011/11/6
Conference
2011 International Conference on Computer Vision
Pages
1631-1638
Publisher
IEEE
Description
Recently, hashing based Approximate Nearest Neighbor (ANN) techniques have been attracting lots of attention in computer vision. The data-dependent hashing methods, e.g., Spectral Hashing, expects better performance than the data-blind counterparts, e.g., Locality Sensitive Hashing (LSH). However, most data-dependent hashing methods only employ a single hash table. When higher recall is desired, they have to retrieve exponentially growing number of hash buckets around the bucket containing the query, which may drag down the precision rapidly. In this paper, we propose a so-called complementary hashing approach, which is able to balance the precision and recall in a more effective way. The key idea is to employ multiple complementary hash tables, which are learned sequentially in a boosting manner, so that, given a query, its true nearest neighbors missed from the active bucket of one hash table …
Total citations
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Scholar articles
H Xu, J Wang, Z Li, G Zeng, S Li, N Yu - 2011 International Conference on Computer Vision, 2011