Exploring local delaunay graph based neural network for 3D object detection

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dc.contributor.advisor Poovvancheri, Jiju
dc.creator Pandey, Bivash
dc.date.accessioned 2022-05-06T19:52:56Z
dc.date.available 2022-05-06T19:52:56Z
dc.date.issued 2022-04-26
dc.identifier.uri http://library2.smu.ca/xmlui/handle/01/30912
dc.description 1 online resource (v, 41 pages) : colour illustrations, colour charts, graphs
dc.description Includes abstract.
dc.description Includes bibliographical references (pages 36-41).
dc.description.abstract Three-dimensional object detectors are essential components of the perception sys tems of autonomous robots. Most of the 3D object detection methods are point-based, voxel-based, or point-voxel-based (uses both point-based and voxel-based approaches). Recently, few works have used graph neural networks for 3D object detection and achieved promising results. Representation of a point cloud as a graph preserves the irregularity and removes the cost associated with the transformation into voxel grids or projection into a bird’s eye view. In this thesis, we study the effects of point cloud encoding using local Delaunay graphs by embedding it in an existing graph neural network (Point-GNN). We perform experiments on the KITTI benchmark and find that graph-based methods achieve higher or comparable accuracy. Our results are comparable with most of the state-of-the-art methods. Further, our study indicates that the selection of the right type of proximity graph representation is crucial for real-time 3D object detection. en_CA
dc.description.provenance Submitted by Greg Hilliard (greg.hilliard@smu.ca) on 2022-05-06T19:52:56Z No. of bitstreams: 1 Pandey_Bivash_Honours_2022.pdf: 14290021 bytes, checksum: 2d7b048ef3f43b456d1cfc962ed73ea3 (MD5) en
dc.description.provenance Made available in DSpace on 2022-05-06T19:52:56Z (GMT). No. of bitstreams: 1 Pandey_Bivash_Honours_2022.pdf: 14290021 bytes, checksum: 2d7b048ef3f43b456d1cfc962ed73ea3 (MD5) Previous issue date: 2022-04-26 en
dc.language.iso en en_CA
dc.publisher Halifax, N.S. : Saint Mary's University
dc.title Exploring local delaunay graph based neural network for 3D object detection en_CA
dc.type Text en_CA
thesis.degree.name Bachelor of Science (Honours Computing Science)
thesis.degree.level Undergraduate
thesis.degree.discipline Mathematics and Computing Science
thesis.degree.grantor Saint Mary's University (Halifax, N.S.)
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