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3D-model ShapeNet Core Classification using Meta-Semantic Learning

Authors :
Mohammadi, Farid Ghareh
Chen, Cheng
Shenavarmasouleh, Farzan
Amini, M. Hadi
Morkos, Beshoy
Arabnia, Hamid R.
Publication Year :
2022

Abstract

Understanding 3D point cloud models for learning purposes has become an imperative challenge for real-world identification such as autonomous driving systems. A wide variety of solutions using deep learning have been proposed for point cloud segmentation, object detection, and classification. These methods, however, often require a considerable number of model parameters and are computationally expensive. We study a semantic dimension of given 3D data points and propose an efficient method called Meta-Semantic Learning (Meta-SeL). Meta-SeL is an integrated framework that leverages two input 3D local points (input 3D models and part-segmentation labels), providing a time and cost-efficient, and precise projection model for a number of 3D recognition tasks. The results indicate that Meta-SeL yields competitive performance in comparison with other complex state-of-the-art work. Moreover, being random shuffle invariant, Meta-SeL is resilient to translation as well as jittering noise.<br />Comment: The 6th International Conference on Applied Cognitive Computing

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2205.15869
Document Type :
Working Paper