LARD - Landing Approach Runway Detection -- Dataset for Vision Based
Landing
- URL: http://arxiv.org/abs/2304.09938v2
- Date: Fri, 21 Apr 2023 13:58:29 GMT
- Title: LARD - Landing Approach Runway Detection -- Dataset for Vision Based
Landing
- Authors: M\'elanie Ducoffe, Maxime Carrere, L\'eo F\'eliers, Adrien Gauffriau,
Vincent Mussot, Claire Pagetti, Thierry Sammour
- Abstract summary: We present a dataset of high-quality aerial images for the task of runway detection during approach and landing phases.
Most of the dataset is composed of synthetic images but we also provide manually labelled images from real landing footages.
This dataset paves the way for further research such as the analysis of dataset quality or the development of models to cope with the detection tasks.
- Score: 2.7400353551392853
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: As the interest in autonomous systems continues to grow, one of the major
challenges is collecting sufficient and representative real-world data. Despite
the strong practical and commercial interest in autonomous landing systems in
the aerospace field, there is a lack of open-source datasets of aerial images.
To address this issue, we present a dataset-lard-of high-quality aerial images
for the task of runway detection during approach and landing phases. Most of
the dataset is composed of synthetic images but we also provide manually
labelled images from real landing footages, to extend the detection task to a
more realistic setting. In addition, we offer the generator which can produce
such synthetic front-view images and enables automatic annotation of the runway
corners through geometric transformations. This dataset paves the way for
further research such as the analysis of dataset quality or the development of
models to cope with the detection tasks. Find data, code and more up-to-date
information at https://github.com/deel-ai/LARD
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