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Papers/LaneCPP: Continuous 3D Lane Detection using Physical Priors

LaneCPP: Continuous 3D Lane Detection using Physical Priors

Maximilian Pittner, Joel Janai, Alexandru P. Condurache

2024-06-12CVPR 2024 13D Lane DetectionAutonomous DrivingLane Detection
PaperPDF

Abstract

Monocular 3D lane detection has become a fundamental problem in the context of autonomous driving, which comprises the tasks of finding the road surface and locating lane markings. One major challenge lies in a flexible but robust line representation capable of modeling complex lane structures, while still avoiding unpredictable behavior. While previous methods rely on fully data-driven approaches, we instead introduce a novel approach LaneCPP that uses a continuous 3D lane detection model leveraging physical prior knowledge about the lane structure and road geometry. While our sophisticated lane model is capable of modeling complex road structures, it also shows robust behavior since physical constraints are incorporated by means of a regularization scheme that can be analytically applied to our parametric representation. Moreover, we incorporate prior knowledge about the road geometry into the 3D feature space by modeling geometry-aware spatial features, guiding the network to learn an internal road surface representation. In our experiments, we show the benefits of our contributions and prove the meaningfulness of using priors to make 3D lane detection more robust. The results show that LaneCPP achieves state-of-the-art performance in terms of F-Score and geometric errors.

Results

TaskDatasetMetricValueModel
Autonomous VehiclesApollo Synthetic 3D LaneF197.4LaneCPP
Autonomous VehiclesApollo Synthetic 3D LaneX error far0.277LaneCPP
Autonomous VehiclesApollo Synthetic 3D LaneX error near0.03LaneCPP
Autonomous VehiclesApollo Synthetic 3D LaneZ error far0.206LaneCPP
Autonomous VehiclesApollo Synthetic 3D LaneZ error near0.011LaneCPP
Autonomous VehiclesOpenLaneCurve64.4LaneCPP
Autonomous VehiclesOpenLaneExtreme Weather56.7LaneCPP
Autonomous VehiclesOpenLaneF1 (all)60.3LaneCPP
Autonomous VehiclesOpenLaneIntersection52LaneCPP
Autonomous VehiclesOpenLaneMerge & Split58.7LaneCPP
Autonomous VehiclesOpenLaneNight54.9LaneCPP
Autonomous VehiclesOpenLaneUp & Down53.6LaneCPP
Lane DetectionApollo Synthetic 3D LaneF197.4LaneCPP
Lane DetectionApollo Synthetic 3D LaneX error far0.277LaneCPP
Lane DetectionApollo Synthetic 3D LaneX error near0.03LaneCPP
Lane DetectionApollo Synthetic 3D LaneZ error far0.206LaneCPP
Lane DetectionApollo Synthetic 3D LaneZ error near0.011LaneCPP
Lane DetectionOpenLaneCurve64.4LaneCPP
Lane DetectionOpenLaneExtreme Weather56.7LaneCPP
Lane DetectionOpenLaneF1 (all)60.3LaneCPP
Lane DetectionOpenLaneIntersection52LaneCPP
Lane DetectionOpenLaneMerge & Split58.7LaneCPP
Lane DetectionOpenLaneNight54.9LaneCPP
Lane DetectionOpenLaneUp & Down53.6LaneCPP

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