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research-article

SST: Synchronized Spatial-Temporal Trajectory Similarity Search

Published: 01 October 2020 Publication History

Abstract

The volume of trajectory data has become tremendously large in recent years. How to effectively and efficiently search similar trajectories has become an important task. Firstly, to measure the similarity between a trajectory and a query, literature works compute spatial similarity and temporal similarity independently, and next sum the two weighted similarities. Thus, two trajectories with high spatial similarity and low temporal similarity will have the same overall similarity with another two trajectories with low spatial similarity and high temporal similarity. To overcome this issue, we propose to measure the similarity by synchronously matching the spatial distance against temporal distance. Secondly, given this new similarity measurement, to overcome the challenge of searching top-k similar trajectories over a huge trajectory database with non-trivial number of query points, we propose to efficiently answer the top-k similarity search by following two techniques: trajectory database grid indexing and query partitioning. The performance of our proposed algorithms is studied in extensive experiments based on two real data sets.

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Index Terms

  1. SST: Synchronized Spatial-Temporal Trajectory Similarity Search
          Index terms have been assigned to the content through auto-classification.

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          Information & Contributors

          Information

          Published In

          cover image Geoinformatica
          Geoinformatica  Volume 24, Issue 4
          Oct 2020
          313 pages

          Publisher

          Kluwer Academic Publishers

          United States

          Publication History

          Published: 01 October 2020
          Accepted: 01 April 2020
          Revision received: 19 November 2019
          Received: 02 June 2019

          Author Tags

          1. Trajectory
          2. Spatial-Temporal Similarity
          3. Top-k Search

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