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Road defect detection

Road defect detection with neural network and LiDAR-camera fusion

The project will further develop and optimise the road defect detection algorithm developed within ARNL. The algorithm uses a self-learning neural network, LiDAR and camera fusion to determine road surface deviations in front of vehicles that are important for vehicle speed. The resulting system warns the driver if a speed reduction is required, or generates an intervention signal to the vehicle control system in the case of a self-driving vehicle. The off-the-shelf system uses low-cost and compact camera and LiDAR devices, and the algorithm can process real-time synchronised LiDAR camera images on embedded low-power systems.

Participants

  • HUN-REN Institute for Computer Science and Control
  • D3Seeron Ltd.
  • ESA Sparkfunding

Project coordinator

Members

Media

PotDet_result_2024-02-17_newNNetwork_Segment_0_x264_001.mp4
MP4 video
28 MB