Published February 3, 2020 | Version v1
Journal article Open

Online Long-Term Trajectory Prediction Based on Mined Route Patterns

  • 1. Department of Informatics, 80 Karaoli & Dimitriou str., P.O. 18534, Piraeus, Greece
  • 2. Department of Statistics and Insurance Science, University of Piraeus, 80 Karaoli & Dimitriou str., P.O. 18534, Piraeus, Greece

Description

In this paper, we present a Big data framework for the pre- diction of streaming trajectory data by exploiting mined patterns of tra- jectories, allowing accurate long-term predictions with low latency. In particular, to meet this goal we follow a two-step methodology. First, we efficiently identify the hidden mobility patterns in an offline manner. Subsequently, the trajectory prediction algorithm exploits these patterns in order to prolong the temporal horizon of useful predictions. The exper- imental study is based on real-world aviation and maritime datasets.

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Additional details

Funding

European Commission
MASTER – Multiple ASpects TrajEctoRy management and analysis 777695