Graph attention networks for point cloud processing

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dc.contributor.advisor Poovvancheri, Jiju
dc.creator Thakur, Sumesh
dc.date.accessioned 2021-08-04T13:53:33Z
dc.date.available 2021-08-04T13:53:33Z
dc.date.issued 2021
dc.identifier.other TA1634 T48 2021
dc.identifier.uri http://library2.smu.ca/xmlui/handle/01/29723
dc.description 1 online resource (58 pages) : colour illustrations.
dc.description Includes abstract.
dc.description Includes bibliographical references (pages 52-58).
dc.description.abstract Three-dimensional point cloud datasets are becoming ubiquitous due to the availability of consumer-grade 3D sensors such as Light Detection and Ranging (LIDAR), and RGB-D cameras. Recent advancements in 3D deep learning has dramatically improved the ability to recognize physical objects and interpret the indoor and outdoor scenes using point clouds acquired through different sensors. This thesis focuses on deep learning based techniques for point cloud processing. We propose novel architectures leveraging graph attention networks for point cloud-based object detection, classification, and segmentation. The proposed architectures work on point cloud scans directly by constructing a connected graph. For point cloud detection, we use the concatenation of relative geometric difference and feature difference between each pair of neighbouring points in the graph. To improve the performance of object detection, we introduce a distance-aware down-sampling scheme for object detection space. For point cloud segmentation and classification, we employ a global aware attention module using global, local, and self feature information. The experiments on different datasets (KITTI, ShapeNet, ModelNet, and Semantic3D) show that our methods yield comparable results for object detection, part segmentation, semantic segmentation, and classification. en_CA
dc.description.provenance Submitted by Greg Hilliard (greg.hilliard@smu.ca) on 2021-08-04T13:53:33Z No. of bitstreams: 1 Thakur_Sumesh_MASTERS_2021.pdf: 16336441 bytes, checksum: 95bcc7401c162cf66390557c58b9fbe6 (MD5) en
dc.description.provenance Made available in DSpace on 2021-08-04T13:53:33Z (GMT). No. of bitstreams: 1 Thakur_Sumesh_MASTERS_2021.pdf: 16336441 bytes, checksum: 95bcc7401c162cf66390557c58b9fbe6 (MD5) Previous issue date: 2021-07-31 en
dc.language.iso en en_CA
dc.publisher Halifax, N.S. : Saint Mary's University
dc.subject.lcc TA1634
dc.subject.lcsh Computer vision
dc.subject.lcsh Computer vision -- Mathematical models
dc.subject.lcsh Three-dimensional imaging
dc.subject.lcsh Image processing
dc.title Graph attention networks for point cloud processing en_CA
dc.type Text en_CA
thesis.degree.name Master of Science in Applied Science
thesis.degree.level Masters
thesis.degree.discipline Mathematics and Computing Science
thesis.degree.grantor Saint Mary's University (Halifax, N.S.)
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