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Autori principali: Freund, Niklas, Ilknur-Öz, Zekiye, Klockau, Tobias, Naumann, Patrick, Neumaier, Philipp, Köppel, Martin
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2603.00114
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author Freund, Niklas
Ilknur-Öz, Zekiye
Klockau, Tobias
Naumann, Patrick
Neumaier, Philipp
Köppel, Martin
author_facet Freund, Niklas
Ilknur-Öz, Zekiye
Klockau, Tobias
Naumann, Patrick
Neumaier, Philipp
Köppel, Martin
contents The monitoring of the route and track environment plays an important role in automated driving. For example, it can be used as an assistance system for route monitoring in automation level Grade of Automation (GoA) 2, where the train driver is still on board. In fully automated, driverless driving at automation level GoA4, these systems finally take over environment monitoring completely independently. With the help of artificial intelligence (AI), they react automatically to risks and dangerous events on the route. To train such AI algorithms, large amounts of training data are required, which must meet high-quality standards due to their safety relevance. In this publication we present an automatic method for assuring the quality of training data, significantly reducing the manual workload and accelerating the development of these systems. We propose an open-source tool designed to detect nine common errors found in multi-sensor datasets for railway vehicles. To evaluate the performance of the framework, all detected errors were manually validated. Six issue detection methods achieved 100% precision, while three additional methods reached precision rates 96% and 97%.
format Preprint
id arxiv_https___arxiv_org_abs_2603_00114
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Automated Quality Check of Sensor Data Annotations
Freund, Niklas
Ilknur-Öz, Zekiye
Klockau, Tobias
Naumann, Patrick
Neumaier, Philipp
Köppel, Martin
Computer Vision and Pattern Recognition
The monitoring of the route and track environment plays an important role in automated driving. For example, it can be used as an assistance system for route monitoring in automation level Grade of Automation (GoA) 2, where the train driver is still on board. In fully automated, driverless driving at automation level GoA4, these systems finally take over environment monitoring completely independently. With the help of artificial intelligence (AI), they react automatically to risks and dangerous events on the route. To train such AI algorithms, large amounts of training data are required, which must meet high-quality standards due to their safety relevance. In this publication we present an automatic method for assuring the quality of training data, significantly reducing the manual workload and accelerating the development of these systems. We propose an open-source tool designed to detect nine common errors found in multi-sensor datasets for railway vehicles. To evaluate the performance of the framework, all detected errors were manually validated. Six issue detection methods achieved 100% precision, while three additional methods reached precision rates 96% and 97%.
title Automated Quality Check of Sensor Data Annotations
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.00114