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Semantic Scholar · Article (IEEE Workshop/Winter Conference on Applications of Computer Vision)

DrIFT: Autonomous Drone Dataset with Integrated Real and Synthetic Data, Flexible Views, and Transformed Domains

Published 2024-12-06 From IEEE Workshop/Winter Conference on Applications of Computer Vision 5 authors

Attribution

This is the abstract and citation. Full text lives at Semantic Scholar — we link out rather than host. All credit to the authors and IEEE Workshop/Winter Conference on Applications of Computer Vision.

Abstract

Verbatim from Semantic Scholar. Not paraphrased, not summarized.

Dependable visual drone detection is crucial for the secure integration of drones into the airspace. However, drone detection accuracy is significantly affected by domain shifts due to environmental changes, varied points of view, and background shifts. To address these challenges, we present the DrIFT dataset, specifically developed for visual drone detection under domain shifts. DrIFT includes fourteen distinct domains, each characterized by shifts in point of view, synthetic-to-real data, season, and adverse weather. DrIFT uniquely emphasizes background shift by providing background segmentation maps to enable background-wise metrics and evaluation. Our new uncertainty estimation metric, MCDO-map, features lower postprocessing complexity, surpassing traditional methods. We use the MCDO-map in our uncertainty-aware unsupervised domain adaptation method, demonstrating superior performance to SOTA unsupervised domain adaptation techniques. The dataset is available at: https://github.com/CARG-uOttawa/DrIFT.git.

Authors

  • Fardad Dadboud
  • Hamid Azad uottawa.ca
  • V. Mehta
  • M. Bolic
  • Iraj Mntegh

Keywords

  • Computer Science
  • Engineering
  • Environmental Science

Citation: Fardad Dadboud, Hamid Azad, V. Mehta , et al. (2024). DrIFT: Autonomous Drone Dataset with Integrated Real and Synthetic Data, Flexible Views, and Transformed Domains. IEEE Workshop/Winter Conference on Applications of Computer Vision. Semantic Scholar ID 825b86a7616b7b270b475176307c724927e91b9a. https://doi.org/10.1109/WACV61041.2025.00671 ↗