LiDAR (Light Detection and Ranging) is an advanced active remote sensing
technique working on the principle of time of travel (ToT) for capturing highly
accurate 3D information of the surroundings. LiDAR has gained wide attention in
research and development with the LiDAR industry expected to reach 2.8 billion
by2025.AlthoughtheLiDARdatasetisofrichdensityandhighspatialresolution,itischallengingtoprocessLiDARdataduetoitsinherent3Dgeometryandmassivevolume.Butsuchahigh−resolutiondatasetpossessesimmensepotentialinmanyapplicationsandhasgreatpotentialin3Dobjectdetectionandrecognition.InthisresearchweproposeGraphNeuralNetwork(GNN)basedframeworktolearnandidentifytheobjectsinthe3DLiDARpointclouds.GNNsareclassofdeeplearningwhichlearnsthepatternsandobjectsbasedontheprincipleofgraphlearningwhichhaveshownsuccessinvarious3Dcomputervisiontasks.