SLAM system using only point cloud has been proven successful in recent
years. In most of these systems, they extract features for tracking after
ground removal, which causes large variance on the z-axis. Ground actually
provides robust information to obtain [t_z, \theta_{roll}, \theta_{pitch}].Inthisproject,wefollowedtheLeGO−LOAM,alight−weightedreal−timeSLAMsystemthatextractsandregistersgroundasanadditiontotheoriginalLOAM,andweproposedanewclustering−basedmethodtorefinetheplanarextractionalgorithmforgroundsuchthatthesystemcanhandlemuchmorenoisyordynamicenvironments.WeimplementedthismethodandcompareditwithLeGo−LOAMonourcollecteddataofCMUcampus,aswellasacollecteddatasetforATV(All−TerrainVehicle)foroff−roadself−driving.Bothvisualizationandevaluationresultsshowobviousimprovementofouralgorithm.