Abstract
Trajectory data combines the complexities of time series, spatial data, and (sometimes irrational) movement behavior. As data
availability and computing power have increased, so has the popularity of deep learning from trajectory data. This paper aims to provide an overview of deep neural networks designed to learn from trajectory data, focusing on recent work published between 2020 and 2022. We take a data-centric approach and distinguish between deep learning models trained using dense trajectories (quasi-continuous tracking data), sparse trajectories (such as check-in data), and aggregated trajectories (crowd
information).
availability and computing power have increased, so has the popularity of deep learning from trajectory data. This paper aims to provide an overview of deep neural networks designed to learn from trajectory data, focusing on recent work published between 2020 and 2022. We take a data-centric approach and distinguish between deep learning models trained using dense trajectories (quasi-continuous tracking data), sparse trajectories (such as check-in data), and aggregated trajectories (crowd
information).
Original language | English |
---|---|
Title of host publication | CEUR Workshop Proceedings 2023 |
Editors | George Fletcher, Verena Kantere |
Number of pages | 12 |
Volume | 3379 |
Publication status | Published - 2023 |
Event | Big Mobility Data Analytics BMDA 2023 - Ioannina, Greece Duration: 28 Mar 2023 → 28 Mar 2023 |
Conference
Conference | Big Mobility Data Analytics BMDA 2023 |
---|---|
Country/Territory | Greece |
City | Ioannina |
Period | 28/03/23 → 28/03/23 |
Research Field
- Former Research Field - Data Science