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Multi-Objective Classification of Three-Dimensional Imaging Radar Point Clouds: Support Vector Machine and PointNet

Journal Article
12-04-04-0028
ISSN: 2574-0741, e-ISSN: 2574-075X
Published October 21, 2021 by SAE International in United States
Multi-Objective Classification of Three-Dimensional Imaging Radar Point Clouds: Support Vector Machine and PointNet
Sector:
Citation: Bai, J., Long, K., Li, S., Huang, L. et al., "Multi-Objective Classification of Three-Dimensional Imaging Radar Point Clouds: Support Vector Machine and PointNet," SAE Intl. J CAV 4(4):371-382, 2021, https://doi.org/10.4271/12-04-04-0028.
Language: English

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