• Corpus ID: 232307490

UAV Images Dataset for Moving Object Detection from Moving Cameras

@article{Delibasoglu2021UAVID,
  title={UAV Images Dataset for Moving Object Detection from Moving Cameras},
  author={Ibrahim Delibasoglu},
  journal={ArXiv},
  year={2021},
  volume={abs/2103.11460}
}
  • I. Delibasoglu
  • Published 21 March 2021
  • Computer Science, Environmental Science
  • ArXiv
This paper presents a new high resolution aerial images dataset in which moving objects are labelled manually. It aims to contribute to the evaluation of the moving object detection methods for moving cameras. The problem of recognizing moving objects from aerial images is one of the important issues in computer vision. The biggest problem in the images taken by UAV is that the background is constantly variable due to camera movement. There are various datasets in the literature in which… 

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