English

CM Sequence based Trajectory Modeling with Destination

Systems and Control 2021-03-16 v4 Signal Processing

Abstract

In some problems there is information about the destination of a moving object. An example is an airliner flying from an origin to a destination. Such problems have three main components: an origin, a destination, and motion in between. To emphasize that the motion trajectories end up at the destination, we call them \textit{destination-directed trajectories}. The Markov sequence is not flexible enough to model such trajectories. Given an initial density and an evolution law, the future of a Markov sequence is determined probabilistically. One class of conditionally Markov (CM) sequences, called the CMLCM_L sequence (including the Markov sequence as a special case), has the following main components: a joint endpoint density (i.e., an initial density and a final density conditioned on the initial) and a Markov-like evolution law. This paper proposes using the CMLCM_L sequence for modeling destination-directed trajectories. It is demonstrated how the CMLCM_L sequence enjoys several desirable properties for destination-directed trajectory modeling. Some simulations of trajectory modeling and prediction are presented for illustration.

Cite

@article{arxiv.1811.08021,
  title  = {CM Sequence based Trajectory Modeling with Destination},
  author = {Reza Rezaie and X. Rong Li},
  journal= {arXiv preprint arXiv:1811.08021},
  year   = {2021}
}
R2 v1 2026-06-23T05:21:32.760Z