Publication | Closed Access
LiStereo: Generate Dense Depth Maps from LIDAR and Stereo Imagery
36
Citations
41
References
2020
Year
Unknown Venue
EngineeringMachine LearningStereo ImageryField RoboticsPoint Cloud ProcessingDepth Map3D Computer VisionImage AnalysisStereo VisionAutonomous VehiclesLight DetectionComputational ImagingRobot LearningGeometric ModelingMachine VisionDeep LearningSparse Depth MapComputer Vision3D VisionComputer Stereo VisionRoboticsStereoscopic ProcessingAccurate Depth Map
An accurate depth map of the environment is critical to the safe operation of autonomous robots and vehicles. Currently, either light detection and ranging (LIDAR) or stereo matching algorithms are used to acquire such depth information. However, a high-resolution LIDAR is expensive and produces sparse depth map at large range; stereo matching algorithms are able to generate denser depth maps but are typically less accurate than LIDAR at long range. This paper combines these approaches together to generate high-quality dense depth maps. Unlike previous approaches that are trained using ground-truth labels, the proposed model adopts a self-supervised training process. Experiments show that the proposed method is able to generate high-quality dense depth maps and performs robustly even with low-resolution inputs. This shows the potential to reduce the cost by using LIDARs with lower resolution in concert with stereo systems while maintaining high resolution.
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