Título
Image Enhancement using GANs for Monocular Visual OdometryFecha de publicación
2021Otras instituciones
Ikerlanhttps://ror.org/00wvqgd19
Aalborg Universitet (Denmark)
Versión
PostprintTipo de documento
Contribución a congresoIdioma
InglésDerechos
© 2021 IEEEAcceso
Acceso abiertoVersión de la editorial
https://doi.org/10.1109/ECMSM51310.2021.9468831Publicado en
IEEE International Workshop of Electronics, Control, Measurement, Signals and their application to Mechatronics (ECMSM) 15. Liberec (República Checa), 21-22 junio 2021Editorial
IEEEPalabras clave
Image enhancementCalibration methods
Visual odometry
Deep learning
Resumen
Drones, mobile robots, and autonomous vehicles use Visual Odometry (VO) to move around complex environments. ORB-SLAM or deep learning-based approaches like DF-VO are two of the state-of-the-art techn ... [+]
Drones, mobile robots, and autonomous vehicles use Visual Odometry (VO) to move around complex environments. ORB-SLAM or deep learning-based approaches like DF-VO are two of the state-of-the-art technics for monocular VO. Those two technics perform correctly in outdoor scenarios but show some limitations in indoor environments. The extreme lighting conditions, non-Lambertian surfaces, or occlusion of indoor environments can disturb the visual information, and so the odometry information. Generative Adversarial Network (GAN) architectures recently proposed in the literature can help to overcome image low-light and blurring limitations. This research study aims to assess image enhancement's impact using GANS on the Visual Odometry algorithm DF-VO. Since DF-VO is also based on visual geometric information, the paper first considers the effect of two different GAN architectures in the camera's calibration. Then, the impact in the odometry information computed by DF-VO is evaluated. The preliminary results show that the reprojection error and the uncertainty of the calibration of a pin-hole-based camera do not increase significantly, and DF-VO's performance is improved. [-]


















