Spatiotemporal indexing techniques for efficiently mining spatiotemporal co-occurrence patterns
2014 IEEE international conference on big data (Big Data), 2014•ieeexplore.ieee.org
In this paper, we investigate using specifically-designated spatiotemporal indexing
techniques for mining cooccurrence patterns from spatiotemporal datasets with evolving
polygon-based representations. Previously, suggested techniques for spatiotemporal
pattern mining algorithms did not take spatiotemporal indexing techniques into account. We
present a new framework for mining spatiotemporal co-occurrence patterns that can use
various indexing techniques for efficiently accessing data. Two well-studied spatiotemporal …
techniques for mining cooccurrence patterns from spatiotemporal datasets with evolving
polygon-based representations. Previously, suggested techniques for spatiotemporal
pattern mining algorithms did not take spatiotemporal indexing techniques into account. We
present a new framework for mining spatiotemporal co-occurrence patterns that can use
various indexing techniques for efficiently accessing data. Two well-studied spatiotemporal …
In this paper, we investigate using specifically-designated spatiotemporal indexing techniques for mining cooccurrence patterns from spatiotemporal datasets with evolving polygon-based representations. Previously, suggested techniques for spatiotemporal pattern mining algorithms did not take spatiotemporal indexing techniques into account. We present a new framework for mining spatiotemporal co-occurrence patterns that can use various indexing techniques for efficiently accessing data. Two well-studied spatiotemporal indexing structures, Scalable and Efficient Trajectory Index (SETI) and Chebyshev Polynomial Indexing are currently implemented and available in our framework.
ieeexplore.ieee.org