Title :
HiPeR: Hierarchical Progressive Exact Retrieval in Multidimensional Spaces
Author :
Bouteldja, N. ; Gouet-Brunet, V. ; Scholl, M.
Author_Institution :
CEDRIC CNAM, Paris
Abstract :
In this article, we are interested in accelerating similarity search in high dimensional vector spaces. The presented approach, called HiPeR, is based on a hierarchy of sub- spaces and indexes: it performs nearest neighbors search across spaces of different dimensions, by beginning with the lowest dimensions up to the highest ones, with the aim of minimizing the effects of the curse of dimensionality. HiPeR significantly accelerates exact retrieval even with the best indexes, and also allows for progressive retrieval, i.e. the possibility to provide results to the user progressively with refinements until satisfaction. Scanning the hierarchy can be done according to several strategies. We propose and evaluate two heuristics: the first one supposes an a priori knowledge on the data-set distribution, while the second chooses the most interesting levels at run time. HiPeR is evaluated for range queries on 3 real data-sets varying from 500,000 vectors to 4 millions.
Keywords :
query processing; HiPeR; data-set distribution; hierarchical progressive exact retrieval; high dimensional vector spaces; multidimensional spaces; range queries; Acceleration; Content based retrieval; Design methodology; Filtering; Hierarchical systems; Image retrieval; Indexing; Multidimensional systems; Nearest neighbor searches; Spatial databases; Multidimensional Indexing; Progressive Retrieval; Range Queries; Similarity Retrieval;
Conference_Titel :
Similarity Search and Applications, 2008. SISAP 2008. First International Workshop on
Conference_Location :
Belfast
Print_ISBN :
0-7695-3101-6
DOI :
10.1109/SISAP.2008.19