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Papers/3D-LaneNet: End-to-End 3D Multiple Lane Detection

3D-LaneNet: End-to-End 3D Multiple Lane Detection

Noa Garnett, Rafi Cohen, Tomer Pe'er, Roee Lahav, Dan Levi

2018-11-26ICCV 2019 103D Lane DetectionClusteringobject-detectionObject DetectionLane Detection
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Abstract

We introduce a network that directly predicts the 3D layout of lanes in a road scene from a single image. This work marks a first attempt to address this task with on-board sensing without assuming a known constant lane width or relying on pre-mapped environments. Our network architecture, 3D-LaneNet, applies two new concepts: intra-network inverse-perspective mapping (IPM) and anchor-based lane representation. The intra-network IPM projection facilitates a dual-representation information flow in both regular image-view and top-view. An anchor-per-column output representation enables our end-to-end approach which replaces common heuristics such as clustering and outlier rejection, casting lane estimation as an object detection problem. In addition, our approach explicitly handles complex situations such as lane merges and splits. Results are shown on two new 3D lane datasets, a synthetic and a real one. For comparison with existing methods, we test our approach on the image-only tuSimple lane detection benchmark, achieving performance competitive with state-of-the-art.

Results

TaskDatasetMetricValueModel
Autonomous VehiclesApollo Synthetic 3D LaneF186.43D-LaneNet
Autonomous VehiclesApollo Synthetic 3D LaneX error far0.4773D-LaneNet
Autonomous VehiclesApollo Synthetic 3D LaneX error near0.0683D-LaneNet
Autonomous VehiclesApollo Synthetic 3D LaneZ error far0.2023D-LaneNet
Autonomous VehiclesApollo Synthetic 3D LaneZ error near0.0153D-LaneNet
Autonomous VehiclesOpenLaneCurve46.53D-LaneNet
Autonomous VehiclesOpenLaneExtreme Weather47.53D-LaneNet
Autonomous VehiclesOpenLaneF1 (all)44.13D-LaneNet
Autonomous VehiclesOpenLaneIntersection32.13D-LaneNet
Autonomous VehiclesOpenLaneMerge & Split41.73D-LaneNet
Autonomous VehiclesOpenLaneNight41.53D-LaneNet
Autonomous VehiclesOpenLaneUp & Down40.83D-LaneNet
Lane DetectionApollo Synthetic 3D LaneF186.43D-LaneNet
Lane DetectionApollo Synthetic 3D LaneX error far0.4773D-LaneNet
Lane DetectionApollo Synthetic 3D LaneX error near0.0683D-LaneNet
Lane DetectionApollo Synthetic 3D LaneZ error far0.2023D-LaneNet
Lane DetectionApollo Synthetic 3D LaneZ error near0.0153D-LaneNet
Lane DetectionOpenLaneCurve46.53D-LaneNet
Lane DetectionOpenLaneExtreme Weather47.53D-LaneNet
Lane DetectionOpenLaneF1 (all)44.13D-LaneNet
Lane DetectionOpenLaneIntersection32.13D-LaneNet
Lane DetectionOpenLaneMerge & Split41.73D-LaneNet
Lane DetectionOpenLaneNight41.53D-LaneNet
Lane DetectionOpenLaneUp & Down40.83D-LaneNet

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