Litcius/Paper detail

Robust Monocular Localization in Sparse HD Maps Leveraging Multi-Task Uncertainty Estimation

Kürsat Petek, Kshitij Sirohi, D. Büscher, Wolfram Burgard

20222022 International Conference on Robotics and Automation (ICRA)22 citationsDOI

Abstract

Robust localization in dense urban scenarios using a low-cost sensor setup and sparse HD maps is highly relevant for the current advances in autonomous driving, but remains a challenging topic in research. We present a novel monocular localization approach based on a sliding-window pose graph that leverages predicted uncertainties for increased precision and robustness against challenging scenarios and per-frame failures. To this end, we propose an efficient multi-task uncertainty-aware perception module, which covers semantic segmentation, as well as bounding box detection, to enable the localization of vehicles in sparse maps, containing only lane borders and traffic lights. Further, we design differentiable cost maps that are directly generated from the estimated uncertainties. This opens up the possibility to minimize the reprojection loss of amorphous map elements in an association-free and uncertainty-aware manner. Extensive evaluation on the Lyft 5 dataset shows that, despite the sparsity of the map, our approach enables robust and accurate 6D localization in challenging urban scenarios using only monocular camera images and vehicle odometry.

Topics & Concepts

Computer scienceArtificial intelligenceRobustness (evolution)Computer visionSimultaneous localization and mappingBounding overwatchMonocularMobile robotRobotChemistryGeneBiochemistryRobotics and Sensor-Based LocalizationAdvanced Vision and ImagingAdvanced Neural Network Applications