Classification and Segmentation of 3D Cloud Points
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Date
2024-06
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Publisher
Indian Statistical Institute, Kolkata
Abstract
In recent years, the advent of advanced 3D sensing technologies has facilitated
the acquisition of detailed spatial data in the form of point clouds. These
3D point clouds, composed of discrete data points in a spatial coordinate system,
offer a comprehensive representation of object surfaces and environments, makingthemindispensable
in various applications, ranging fromautonomousdriving
and robotics to architecture and healthcare. This thesis explores the methodologies
and advancements in the classification and segmentation of 3D point clouds,
focusingonboth traditionalmachinelearning approachesandcontemporary deep
learning techniques.
Central to this thesis isanin-depth analysis of state-of-the-art deep learning frameworks
tailored for 3D data, including PointNet, PointNet++. These models, by
leveraging the spatial structure of point clouds, have demonstrated remarkable
performance in both classification and segmentation tasks. The research further
examines advanced segmentation techniques, differentiating between semantic
and instance segmentation, and evaluates their effectiveness in partitioning complex
scenes into meaningful segments.
In conclusion, this thesis contributes to the growing body of knowledge in 3D
point cloud analysis by providing a comprehensive review of existing techniques,
introducingnovelenhancements, andidentifying future research directionsaimed
at further improving the accuracy and applicability of 3D point cloud processing
technologies.
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Description
Dissertation under the supervision of Dr. Malay Bhattacharyya
Keywords
3D Cloud Points, ModelNet Dataset
Citation
40p.
