Publication | Closed Access
1-Day Learning, 1-Year Localization: Long-Term LiDAR Localization Using Scan Context Image
134
Citations
18
References
2019
Year
EngineeringMachine LearningLocation EstimationField RoboticsPoint Cloud ProcessingLocalization TechniqueLocalizationImage AnalysisData SciencePattern RecognitionImage FormatRobot LearningOxford Robotcar DatasetCartographyMachine VisionObject DetectionVehicle LocalizationScan Context ImageComputer ScienceDeep Learning1-Year Localization1-Day LearningComputer Vision3D Object RecognitionSpatial Verification
In this letter, we present a long-term localization method that effectively exploits the structural information of an environment via an image format. The proposed method presents a robust year-round localization performance even when learned in just a single day. The proposed localizer learns a point cloud descriptor, named Scan Context Image (SCI), and performs robot localization on a grid map by formulating the place recognition problem as place classification using a convolutional neural network. Our method is faster than existing methods proposed for place recognition because it avoids a pairwise comparison between a query and scans in a database. In addition, we provide thorough validations using publicly available long-term datasets, the NCLT dataset and the Oxford RobotCar dataset, and show that the Scan Context Image (SCI) localization attains consistent performance over a year and outperforms existing methods.
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