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PointNet and RandLA-Net Algorithms for Object Detection Using 3D Point Clouds

3차원 포인트 클라우드 데이터를 활용한 객체 탐지 기법인 PointNet과 RandLA-Net

  • Lee, Dong-Kun (Department of Naval Architecture and Ocean Engineering, Mokpo National Maritime University) ;
  • Ji, Seung-Hwan (Department of Ocean System Engineering, Graduate School, Mokpo National Maritime University) ;
  • Park, Bon-Yeong (Department of Ocean System Engineering, Graduate School, Mokpo National Maritime University)
  • 이동건 (목포해양대학교 조선해양공학과) ;
  • 지승환 (목포해양대학교 대학원 해양시스템공학과) ;
  • 박본영 (목포해양대학교 대학원 해양시스템공학과)
  • Received : 2022.07.15
  • Accepted : 2022.09.21
  • Published : 2022.10.20

Abstract

Research on object detection algorithms using 2D data has already progressed to the level of commercialization and is being applied to various manufacturing industries. Object detection technology using 2D data has an effective advantage, there are technical limitations to accurate data generation and analysis. Since 2D data is two-axis data without a sense of depth, ambiguity arises when approached from a practical point of view. Advanced countries such as the United States are leading 3D data collection and research using 3D laser scanners. Existing processing and detection algorithms such as ICP and RANSAC show high accuracy, but are used as a processing speed problem in the processing of large-scale point cloud data. In this study, PointNet a representative technique for detecting objects using widely used 3D point cloud data is analyzed and described. And RandLA-Net, which overcomes the limitations of PointNet's performance and object prediction accuracy, is described a review of detection technology using point cloud data was conducted.

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Acknowledgement

이 논문은 2022년도 정부(산업통상자원부)의 재원으로 한국산업기술진흥원[P0017006, 2022년 산업혁신인재성장지원사업]과 한국해양교통안전공단의 2022년 자체연구개발사업[현장검사 지원을 위한 고정밀 형상계측 기반 디지털선박 원격검사 및 이력관리 기술개발]의 지원을 받아 수행된 연구임