Izenburua
Visual Odometry in Challenging Environments: An Urban Underground Railway Scenario CaseEgilea
Beste instituzio
Aalborg Universitet (Denmark)Ikerlan
Universidad del País Vasco/Euskal Herriko Unibertsitatea (UPV/EHU)
Bertsioa
Bertsio argitaratua
Eskubideak
© 2022 The Authors © 2022 IEEESarbidea
Sarbide irekiaArgitaratzailearen bertsioa
https://doi.org/10.1109/ACCESS.2022.3187209Non argitaratua
IEEE Access Vol. 10. Pp. 69200-69215. July, 2022Lehenengo orria
69200Azken orria
69215Argitaratzailea
IEEEGako-hitzak
Lighting
Rail transportation
Cameras
Location awareness ... [+]
Rail transportation
Cameras
Location awareness ... [+]
Lighting
Rail transportation
Cameras
Location awareness
Estimation
Standards
Visual odometry [-]
Rail transportation
Cameras
Location awareness
Estimation
Standards
Visual odometry [-]
Laburpena
Localization is one of the most critical tasks for an autonomous vehicle, as position information is required to understand its surroundings and move accordingly. Visual Odometry (VO) has shown promis ... [+]
Localization is one of the most critical tasks for an autonomous vehicle, as position information is required to understand its surroundings and move accordingly. Visual Odometry (VO) has shown promising results in the last years. However, VO algorithms are usually evaluated in outdoor street scenarios and do not consider underground railway scenarios, with low lighting conditions in tunnels and significant lighting changes between tunnels and railway platforms. Besides, there is a lack of GPS, and it is not easy to access such infrastructures. This research proposes a method to create a ground truth of images and poses in underground railway scenarios. Second, the EnlightenGAN algorithm is proposed to face challenging lighting conditions, which can be coupled with any state-of-the-art VO techniques. Finally, the obtained ground truth and the EnlightenGAN have been tested in a real scenario. Two different VO approaches have been used: ORB-SLAM2 and DF-VO. The results show that the EnlightenGAN enhancement improves the performance of both approaches. [-]
Sponsorship
Gobierno Vasco-Eusko JaurlaritzaProjectu ID
Bikaintek 2018Bildumak
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