Publication | Open Access
Time-Aware Sub-Trajectory Clustering in Hermes@PostgreSQL
13
Citations
11
References
2018
Year
Unknown Venue
Cluster ComputingEngineeringData ScienceData MiningSpatiotemporal DatabaseEfficient In-dbms FrameworkKnowledge DiscoveryTemporal DataData IntegrationSpatio-temporal Stream ProcessingObject Database EngineComputer ScienceSpatio-temporal ModelTime-aware Sub-trajectory ClusteringBig DataProgressive Cluster Analysis
In this paper, we present an efficient in-DBMS framework for progressive time-aware sub-trajectory cluster analysis. In particular, we address two variants of the problem: (a) spatiotemporal sub-trajectory clustering and (b) index-based time-aware clustering at querying environment. Our approach for (a) relies on a two-phase process: a voting-and-segmentation phase followed by a sampling-and-clustering phase. Regarding (b), we organize data into partitions that correspond to groups of sub-trajectories, which are incrementally maintained in a hierarchical structure. Both approaches have been implemented in Hermes@PostgreSQL, a real Moving Object Database engine built on top of PostgreSQL, enabling users to perform progressive cluster analysis via simple SQL. The framework is also extended with a Visual Analytics (VA) tool to facilitate real world analysis.
| Year | Citations | |
|---|---|---|
Page 1
Page 1