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Main Authors: Bougacha, Yassine, Delhomme, Geoffrey, Ducoffe, Mélanie, Fuchs, Augustin, Ginestet, Jean-Brice, Girard, Jacques, Kraiem, Sofiane, Mamalet, Franck, Mussot, Vincent, Pagetti, Claire, Sammour, Thierry
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.26748
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author Bougacha, Yassine
Delhomme, Geoffrey
Ducoffe, Mélanie
Fuchs, Augustin
Ginestet, Jean-Brice
Girard, Jacques
Kraiem, Sofiane
Mamalet, Franck
Mussot, Vincent
Pagetti, Claire
Sammour, Thierry
author_facet Bougacha, Yassine
Delhomme, Geoffrey
Ducoffe, Mélanie
Fuchs, Augustin
Ginestet, Jean-Brice
Girard, Jacques
Kraiem, Sofiane
Mamalet, Franck
Mussot, Vincent
Pagetti, Claire
Sammour, Thierry
contents This paper addresses key challenges in the development of autonomous landing systems, focusing on dataset limitations for supervised training of Machine Learning (ML) models for object detection. Our main contributions include: (1) Enhancing dataset diversity, by advocating for the inclusion of new sources such as BingMap aerial images and Flight Simulator, to widen the generation scope of an existing dataset generator used to produce the dataset LARD; (2) Refining the Operational Design Domain (ODD), addressing issues like unrealistic landing scenarios and expanding coverage to multi-runway airports; (3) Benchmarking ML models for autonomous landing systems, introducing a framework for evaluating object detection subtask in a complex multi-instances setting, and providing associated open-source models as a baseline for AI models' performance.
format Preprint
id arxiv_https___arxiv_org_abs_2603_26748
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle LARD 2.0: Enhanced Datasets and Benchmarking for Autonomous Landing Systems
Bougacha, Yassine
Delhomme, Geoffrey
Ducoffe, Mélanie
Fuchs, Augustin
Ginestet, Jean-Brice
Girard, Jacques
Kraiem, Sofiane
Mamalet, Franck
Mussot, Vincent
Pagetti, Claire
Sammour, Thierry
Robotics
Artificial Intelligence
This paper addresses key challenges in the development of autonomous landing systems, focusing on dataset limitations for supervised training of Machine Learning (ML) models for object detection. Our main contributions include: (1) Enhancing dataset diversity, by advocating for the inclusion of new sources such as BingMap aerial images and Flight Simulator, to widen the generation scope of an existing dataset generator used to produce the dataset LARD; (2) Refining the Operational Design Domain (ODD), addressing issues like unrealistic landing scenarios and expanding coverage to multi-runway airports; (3) Benchmarking ML models for autonomous landing systems, introducing a framework for evaluating object detection subtask in a complex multi-instances setting, and providing associated open-source models as a baseline for AI models' performance.
title LARD 2.0: Enhanced Datasets and Benchmarking for Autonomous Landing Systems
topic Robotics
Artificial Intelligence
url https://arxiv.org/abs/2603.26748