Publication | Closed Access
EU Long-term Dataset with Multiple Sensors for Autonomous Driving
114
Citations
23
References
2020
Year
Unknown Venue
EngineeringField RoboticsEu Long-term DatasetMulti-sensor Information FusionIntelligent SystemsSensor TechnologyData ScienceAutonomous VehiclesSensor FusionRobotics PerceptionMulti-sensor ManagementVehicle LocalizationComputer ScienceAutonomous DrivingAutonomous NavigationComputer VisionMultisensor PlatformOdometryAutomationRoboticsSensor Suite
The field of autonomous driving has grown tremendously over the past few years, along with the rapid progress in sensor technology. One of the major purposes of using sensors is to provide environment perception for vehicle understanding, learning and reasoning, and ultimately interacting with the environment. In this paper, we first introduce a multisensor platform allowing vehicle to perceive its surroundings and locate itself in a more efficient and accurate way. The platform integrates eleven heterogeneous sensors including various cameras and lidars, a radar, an IMU (Inertial Measurement Unit), and a GPS-RTK (Global Positioning System / Real-Time Kinematic), while exploits a ROS (Robot Operating System) based software to process the sensory data. Then, we present a new dataset (https://epan-utbm.github.io/utbm_robocar_dataset/) for autonomous driving captured many new research challenges (e.g. highly dynamic environment), and especially for long-term autonomy (e.g. creating and maintaining maps), collected with our instrumented vehicle, publicly available to the community.
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