논문 상세보기

무인 자동차의 주변 환경 인식을 위한 도시 환경에서의 그래프 기반 물체 분할 방법 KCI 등재

Graph-based Segmentation for Scene Understanding of an Autonomous Vehicle in Urban Environments

  • 언어KOR
  • URLhttps://db.koreascholar.com/Article/Detail/265347
서비스가 종료되어 열람이 제한될 수 있습니다.
로봇학회논문지 (The Journal of Korea Robotics Society)
한국로봇학회 (Korea Robotics Society)
초록

In recent years, the research of 3D mapping technique in urban environments obtained by mobile robots equipped with multiple sensors for recognizing the robot’s surroundings is being studied actively. However, the map generated by simple integration of multiple sensors data only gives spatial information to robots. To get a semantic knowledge to help an autonomous mobile robot from the map, the robot has to convert low-level map representations to higher-level ones containing semantic knowledge of a scene. Given a 3D point cloud of an urban scene, this research proposes a method to recognize the objects effectively using 3D graph model for autonomous mobile robots. The proposed method is decomposed into three steps: sequential range data acquisition, normal vector estimation and incremental graph-based segmentation. This method guarantees the both real-time performance and accuracy of recognizing the objects in real urban environments. Also, it can provide plentiful data for classifying the objects. To evaluate a performance of proposed method, computation time and recognition rate of objects are analyzed. Experimental results show that the proposed method has efficiently in understanding the semantic knowledge of an urban environment.

저자
  • 서보길(Researcher, Defense Agency for Technology and Quality (DTaQ)) | Bo Gil Seo
  • 최윤근(Robotics Program, KAIST) | Yungeun Choe
  • 노현철(Robotics Program, KAIST) | Hyun Chul Roh
  • 정명진(Electrical Engineering, KAIST) | Myung Jin Chung Corresponding author