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Vehicle detection based on point cloud intensity and distance clustering

Wang Zhao, Xing Wang, Bin Fang, Kun Yu, Jie Ma

2021Journal of Physics Conference Series15 citationsDOIOpen Access PDF

Abstract

Abstract In the intelligent transportation system, vehicle detection is one of the essential technologies in obstacle avoidance and navigation, however the existing vehicle detection methods cannot meet the actual needs. This paper presents a vehicle detection method combines the intensity and distance information of point cloud, which improves the segmentation performance of nearby objects. Specifically, the data of point cloud collected by lidar is preprocessed first. Then the processed point cloud is clustered by combining its coordinate and intensity information. Finally, the clustered suspected targets are fed to the random forest classifier. Our method can efficiently detect and classify targets in large-scale disordered 3D point cloud with high accuracy. In the real-scanned Livox Mid-40 Lidar dataset, our proposed method improves the detection accuracy by 31% compared with the traditional Euclidean clustering.

Topics & Concepts

Point cloudCluster analysisComputer scienceLidarSegmentationArtificial intelligenceObstacleCloud computingComputer visionEuclidean distancePoint (geometry)Remote sensingClassifier (UML)Pattern recognition (psychology)Data miningMathematicsGeographyGeometryOperating systemArchaeologyRemote Sensing and LiDAR ApplicationsAutonomous Vehicle Technology and SafetyAdvanced Optical Sensing Technologies
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