Publication | Closed Access
Unsupervised Geometry-Aware Deep LiDAR Odometry
84
Citations
34
References
2020
Year
Unknown Venue
EngineeringMachine LearningGeometryField RoboticsPoint Cloud ProcessingPoint CloudLocalizationImage AnalysisLight DetectionLidar OdometryRobot LearningSensor FusionComputational GeometryRobotics PerceptionGeometric ModelingMachine VisionVision RoboticsVehicle LocalizationDeep LearningComputer Vision3D VisionOdometryNatural SciencesRoboticsOxford Robotcar
Learning-based ego-motion estimation approaches have recently drawn strong interest from researchers, mostly focusing on visual perception. A few learning-based approaches using Light Detection and Ranging (LiDAR) have been re-ported; however, they heavily rely on a supervised learning manner. Despite the meaningful performance of these approaches, supervised training requires ground-truth pose labels, which is the bottleneck for real-world applications. Differing from these approaches, we focus on unsupervised learning for LiDAR odometry (LO) without trainable labels. Achieving trainable LO in an unsupervised manner, we introduce the uncertainty-aware loss with geometric confidence, thereby al-lowing the reliability of the proposed pipeline. Evaluation on the KITTI, Complex Urban, and Oxford RobotCar datasets demonstrate the prominent performance of the proposed method compared to conventional model-based methods. The proposed method shows a comparable result against SuMa (in KITTI), LeGO-LOAM (in Complex Urban), and Stereo-VO (in Oxford RobotCar). The video and extra-information of the paper are described in https://sites.google.com/view/deeplo.
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