Simulated Dataset for the Loaded vs. Unloaded UAV Classification Problem Using Deep Learning

Published in 2023 IEEE Sensors Applications Symposium (SAS), 2023

Detecting payloads on Uncrewed (or Unmanned) Aerial Vehicles (UAVs) is crucial for safety and security reasons. Deep learning methods can utilize changes in UAV appearance caused by payloads for detection, but collecting sufficient training data through real tests is costly and time-consuming. Therefore, simulation can be a more practical option. This paper presents the first synthetic air-to-air vision dataset for classifying loaded vs. unloaded UAVs. The dataset includes five types of aerial vehicles with attached and hanging payloads of different colors. It also incorporates three environmental conditions (sunny, rainy, and snowy) to diversify the background in recorded videos. Annotated frames and XYZ coordinates of the camera and drone are provided. To validate the dataset, a ResNet-34 network is trained with synthetic data and tested on real UAV flight data. The classification results on the test dataset confirm the effectiveness of the synthetic dataset for payload detection. The synthetic datasetandclassificationcodes arepublicly available on GitHub (https://github.com/CARG-uOttawa/loaded-unloaded-drone-dataset/).

Cite as: H. Azad, V. Mehta, M. Bolic, I. Mantegh, Simulated Dataset for the Loaded vs. Unloaded UAV Classification Problem Using Deep Learning, 2023 IEEE Sensors Applications Symposium (SAS), pp. 1--6, 2023.
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