AeroRunway: Diverse Weather and Time of Day Aerial Dataset for Autonomous Landing Training

Acquiring a sufficient amount of diverse and accurate real-world data poses a significant challenge in advancing autonomous systems, which are becoming increasingly popular. Despite the aerospace industry's keen practical and economic interest in autonomous landing systems, readily available op...

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Bibliographic Details
Main Authors: Ali Berkol, Nergis Pervan Akman, Nesil Bor
Format: Article
Language:English
Published: Çanakkale Onsekiz Mart University 2024-09-01
Series:Journal of Advanced Research in Natural and Applied Sciences
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Online Access:https://dergipark.org.tr/en/download/article-file/4004340
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Summary:Acquiring a sufficient amount of diverse and accurate real-world data poses a significant challenge in advancing autonomous systems, which are becoming increasingly popular. Despite the aerospace industry's keen practical and economic interest in autonomous landing systems, readily available open-source datasets containing aerial photographs are scarce. To address this issue, we present a dataset named AeroRunway, comprising high-quality aerial photos designed to aid in runway recognition during the approach and landing stages. The dataset is composed of images using X-Plane, a flight simulator software developed by Laminar Research. It is a highly realistic and detailed flight simulation program that allows users to experience the sensation of piloting various aircraft in a virtual environment. These synthetic images were collected mostly in variable weather conditions above 5000 feet to supplement existing satellite imagery that can be used for extreme situations. This dataset was created from 28 different airports in different weather conditions, such as foggy and rainy, at various times of the day, such as day and night, and consists of 3880 images and is approximately 13.3 GB in size.
ISSN:2757-5195