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학술대회 3D Map Building Method with Mobile Mapping System in Indoor Environments
Cited 12 time in scopus Download 0 time Share share facebook twitter linkedin kakaostory
저자
이유철, 박승환
발행일
201311
출처
International Conference on Advanced Robotics (ICAR) 2013, pp.1-7
DOI
https://dx.doi.org/10.1109/ICAR.2013.6766588
협약과제
13VC2800, 원전 고방사선구역 작업환경 모니터링 로봇 시스템 개발, 박승환
초록
This paper presents three dimensional (3D) map building method for the intelligent vehicles based on accurate indoor localization using a mobile mapping system (MMS) that is equipped with perception sensors consist of a wheel odometer, a laser range finder (LRF), and two projected texture stereo (PTS) cameras. The environmental data measured by perception sensors are stored in the node units according to a certain distance interval. In order to estimate the positions of the MMS using the relationship among nodes, the localization method is divided into two parts, front-end (map-based scan matching) and back-end (graph-based optimization). The estimated positions are used to build the grid-based map and the point cloud dataset, respectively as the 2D and the 3D maps through the mapping process (Bayesian model). An experiment has been performed in office environment (indoor) to verify the effectiveness of the proposed method. Experimental results show the high precision of 3D point cloud dataset that can be used for various applications including navigation of intelligent vehicles and pedestrians in indoor environments. © 2013 IEEE.
KSP 제안 키워드
3D map building, 3D point cloud, Bayesian model, Front-End, Graph-based optimization, Grid-based, Indoor Environment, Laser range finder, Localization method, Perception sensors, Scan matching