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  4. Songdo Traffic: High Accuracy Georeferenced Vehicle Trajectories from a Large-Scale Study in a Smart City
 
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Songdo Traffic: High Accuracy Georeferenced Vehicle Trajectories from a Large-Scale Study in a Smart City

Fonod, Robert  orcid-logo
•
Cho, Haechan
•
Yeo, Hwasoo
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March 17, 2025
Zenodo

The Songdo Traffic dataset delivers precisely georeferenced vehicle trajectories captured through high-altitude bird's-eye view (BeV) drone footage over Songdo International Business District, South Korea. Comprising approximately 700,000 unique trajectories, this resource represents one of the most extensive aerial traffic datasets publicly available, distinguishing itself through exceptional temporal resolution that captures vehicle movements at 29.97 points per second, enabling unprecedented granularity for advanced urban mobility analysis.

The dataset consists of four primary components: - Trajectory Data: 80 ZIP archives containing high-resolution vehicle trajectories with georeferenced positions, speeds and acceleration profiles, and other metadata. - Orthophoto Cut-Outs: High-resolution (8000×8000 pixel) orthophoto images for each monitored intersection, used for georeferencing and visualization. - Road and Lane Segmentations: CSV files defining lane polygons within road sections, facilitating mapping of vehicle positions to road segments and lanes. - Sample Videos: A selection of 4K UHD drone video samples capturing intersection footage during the experiment.

The dataset was collected as part of a collaborative multi-drone experiment conducted by KAIST and EPFL in Songdo, South Korea, from October 4–7, 2022. - A fleet of 10 drones monitored 20 busy intersections, executing advanced flight plans to optimize coverage. - 4K (3840×2160) RGB video footage was recorded at 29.97 FPS from altitudes of 140–150 meters. - Each drone flew 10 sessions per day, covering peak morning and afternoon periods. - The experiment resulted in 12TB of 4K raw video data.

More details on the experimental setup and data processing pipeline are available in the published article:

Robert Fonod, Haechan Cho, Hwasoo Yeo, Nikolas Geroliminis (2025). Advanced computer vision for extracting georeferenced vehicle trajectories from drone imagery, Transportation Research Part C: Emerging Technologies, vol. 178, 105205. DOI: 10.1016/j.trc.2025.105205

  • Details
  • Metrics
Type
dataset
DOI
10.5281/zenodo.13828383
ACOUA ID

1cb6ce03-d607-404d-a5f6-e6b45135476e

Author(s)
Fonod, Robert  orcid-logo

EPFL

Cho, Haechan

Korea Advanced Institute of Science and Technology

Yeo, Hwasoo

Korea Advanced Institute of Science and Technology

Geroliminis, Nikolaos  

EPFL

Date Issued

2025-03-17

Version

1

Publisher

Zenodo

License

CC BY

Subjects

Georeferenced Vehicle Trajectories

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Urban Traffic Monitoring

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Bird's-Eye View (BeV) Traffic Dataset

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High-Altitude UAV Traffic Data

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Smart City Mobility

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Computer Vision for Traffic Monitoring

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Deep Learning in Transportation

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Multi-Drone Traffic Surveillance

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Geospatial Traffic Data

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GS84 / EPSG:4326 Dataset

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Trajectory Data

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High-Frequency Traffic Dataset

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Drone-Based Traffic Monitoring

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Drones

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Traffic

Additional link
EPFL units
LUTS  
FunderFunding(s)Grant NOGrant URL

Board of the Swiss Federal Institutes of Technology

Open Research Data (ORD) Program of the ETH Board

Swiss National Science Foundation

NCCR Automation (phase I)

180545

Innosuisse – Swiss Innovation Agency

CityDronics

101.645 IP-ENG

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RelationRelated workURL/DOI

IsDescribedBy

Advanced computer vision for extracting georeferenced vehicle
trajectories from drone imagery

https://infoscience.epfl.ch/handle/20.500.14299/248159

IsSupplementedBy

Songdo Vision: Vehicle Annotations from High-Altitude BeV Drone Imagery in a Smart City

https://doi.org/10.5281/zenodo.13828408

IsCompiledBy

Geo-trax: A Comprehensive Framework for Georeferenced Vehicle Trajectory Extraction from Drone Imagery

https://doi.org/10.5281/zenodo.12119542
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Available on Infoscience
March 21, 2025
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/248162
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