TY - GEN
T1 - Probabilistic threshold k nearest neighbor queries over moving objects in symbolic indoor space
AU - Yang, Bin
AU - Lu, Hua
AU - Jensen, Christian S.
PY - 2010
Y1 - 2010
N2 - The availability of indoor positioning renders it possible to deploy location-based services in indoor spaces. Many such services will benefit from the efficient support for k nearest neighbor (kNN) queries over large populations of indoor moving objects. However, existing kNN techniques fall short in indoor spaces because these differ from Euclidean and spatial network spaces and because of the limited capabilities of indoor positioning technologies. To contend with indoor settings, we propose the new concept of minimal indoor walking distance (MIWD) along with algorithms and data structures for distance computing and storage; and we differentiate the states of indoor moving objects based on a positioning device deployment graph, utilize these states in effective object indexing structures, and capture the uncertainty of object locations. On these foundations, we study the probabilistic threshold kNN (PTkNN) query. Given a query location q and a probability threshold T, this query returns all subsets of k objects that have probability larger than T of containing the kNN query result of q. We propose a combination of three techniques for processing this query. The first uses the MIWD metric to prune objects that are too far away. The second uses fast probability estimates to prune unqualified objects and candidate result subsets. The third uses efficient probability evaluation for computing the final result on the remaining candidate subsets. An empirical study using both synthetic and real data shows that the techniques are efficient.
AB - The availability of indoor positioning renders it possible to deploy location-based services in indoor spaces. Many such services will benefit from the efficient support for k nearest neighbor (kNN) queries over large populations of indoor moving objects. However, existing kNN techniques fall short in indoor spaces because these differ from Euclidean and spatial network spaces and because of the limited capabilities of indoor positioning technologies. To contend with indoor settings, we propose the new concept of minimal indoor walking distance (MIWD) along with algorithms and data structures for distance computing and storage; and we differentiate the states of indoor moving objects based on a positioning device deployment graph, utilize these states in effective object indexing structures, and capture the uncertainty of object locations. On these foundations, we study the probabilistic threshold kNN (PTkNN) query. Given a query location q and a probability threshold T, this query returns all subsets of k objects that have probability larger than T of containing the kNN query result of q. We propose a combination of three techniques for processing this query. The first uses the MIWD metric to prune objects that are too far away. The second uses fast probability estimates to prune unqualified objects and candidate result subsets. The third uses efficient probability evaluation for computing the final result on the remaining candidate subsets. An empirical study using both synthetic and real data shows that the techniques are efficient.
KW - Indoor moving objects
KW - Probabilistic threshold k nearest neighbor queries
KW - Symbolic indoor space
KW - Uncertainty
UR - https://www.scopus.com/pages/publications/77952253227
U2 - 10.1145/1739041.1739083
DO - 10.1145/1739041.1739083
M3 - 会议稿件
AN - SCOPUS:77952253227
SN - 9781605589459
T3 - Advances in Database Technology - EDBT 2010 - 13th International Conference on Extending Database Technology, Proceedings
SP - 335
EP - 346
BT - Advances in Database Technology - EDBT 2010 - 13th International Conference on Extending Database Technology, Proceedings
T2 - 13th International Conference on Extending Database Technology: Advances in Database Technology - EDBT 2010
Y2 - 22 March 2010 through 26 March 2010
ER -