Publication | Open Access
A Self-Supervised Terrain Roughness Estimator for Off-Road Autonomous Driving
39
Citations
12
References
2012
Year
EngineeringMachine LearningOff-road AutonomousMachine Learning ApproachField RoboticsPoint Cloud Processing3D Computer VisionImage AnalysisData SciencePattern RecognitionRobot LearningRobotics PerceptionMachine VisionRobot PerceptionVehicle LocalizationComputer ScienceAutonomous DrivingRoad SurfaceAutonomous Navigation3D Object RecognitionComputer VisionCivil EngineeringRemote SensingSecond DerivativeRobotics
We present a machine learning approach for estimating the second derivative of a drivable surface, its roughness. Robot perception generally focuses on the first derivative, obstacle detection. However, the second derivative is also important due to its direct relation (with speed) to the shock the vehicle experiences. Knowing the second derivative allows a vehicle to slow down in advance of rough terrain. Estimating the second derivative is challenging due to uncertainty. For example, at range, laser readings may be so sparse that significant information about the surface is missing. Also, a high degree of precision is required in projecting laser readings. This precision may be unavailable due to latency or error in the pose estimation. We model these sources of error as a multivariate polynomial. Its coefficients are learned using the shock data as ground truth -- the accelerometers are used to train the lasers. The resulting classifier operates on individual laser readings from a road surface described by a 3D point cloud. The classifier identifies sections of road where the second derivative is likely to be large. Thus, the vehicle can slow down in advance, reducing the shock it experiences. The algorithm is an evolution of one we used in the 2005 DARPA Grand Challenge. We analyze it using data from that route.
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