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Improvement of 3D LiDAR point cloud classification of urban road environment based on random forest classifier

Mahmoud Mohamed, Salem Morsy, Adel El-Shazly

2022Geocarto International16 citationsDOI

Abstract

3D road mapping is essential for intelligent transportation system in smart cities. Road environment receives its data from mobile laser scanning (MLS) systems in the format of LiDAR point clouds, which are distinguished with their accuracy and high density. In this paper, a mobile LiDAR data classification method based on machine learning (ML) is presented. First, data subsampling and slicing are applied, followed by cylindrical neighbourhood selection method to determine the neighbourhood of each point. Second, a new LiDAR-based point feature namely Zmod is introduced, and used along with existing fifteen geometric features as input for a ML algorithm. Finally, Random Forest classifier is applied to a part of (Paris-Lille-3D) MLS point clouds belonging to NPM3D Benchmark. The dataset is about 1.5 km long road in Lille, France with more than 98 million points. The use of Zmod improved the accuracy from 90.26% to 95.23% and achieved sufficient results for classes with low points' portion in the dataset. In addition, the Zmod is the third important feature in the classification process among the sixteen features with about 14.63%. Moreover, using the first six important features achieved almost the maximum overall accuracy with about 60% reduction in the processing time.

Topics & Concepts

LidarPoint cloudRandom forestComputer scienceClassifier (UML)SlicingRemote sensingArtificial intelligenceGeographyLaser scanningNeighbourhood (mathematics)Pattern recognition (psychology)Data miningMathematicsLaserComputer graphics (images)OpticsMathematical analysisPhysicsRemote Sensing and LiDAR Applications3D Surveying and Cultural Heritage3D Shape Modeling and Analysis
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