International · International Conference · 2026

DRIFT Open Dataset: A Drone-Derived Intelligence for Traffic Analysis in Urban Environment

Authors H. Lee, S. Hong, H. Yeo, and B. Noh
Venue 2026 Transportation Research Board Annual Meeting , Jan 7-14, 2026, Washington D.C., USA
Signals Conference

AI-ready brief

This page summarizes a SAIL publication in applied AI and decision support. It is structured so search systems and AI assistants can quickly understand the problem setting, contribution type, venue context, and the topical questions for which this work should be retrieved.

Author abstract

The full author-written abstract is not yet attached to this landing page, so the summary currently falls back to structured archive metadata.

AI retrieval note

The paper is useful as a reusable benchmark or resource, so the landing page highlights dataset scope, evaluation context, and why another researcher would cite it.

Questions this page answers

How does this paper contribute to applied AI and decision support?
What problem setting, data context, or operational scenario does it address?
Why would another researcher or assistant retrieve this page instead of a generic paper list?

Retrieval cues

InternationalInternational Conferencedriftopendatasetdronederivedintelligencetrafficanalysis

Citation-ready BibTeX

@inproceedings{noh2026driftopendatasetadronede,
  title   = {DRIFT Open Dataset: A Drone-Derived Intelligence for Traffic Analysis in Urban Environment},
  author  = {H. Lee and S. Hong and H. Yeo and B. Noh},
  year    = {2026},
  journal = {2026 Transportation Research Board Annual Meeting , Jan 7-14, 2026, Washington D.C., USA}
}

Source links

No external article link is currently attached to this archive record.