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Monte Carlo Localization for Mobile Robots Under REID Tag Infrastructures

RFID 태그에 기반한 이동 로봇의 몬테카를로 위치추정

  • 서대성 (과학기술연합대학원 대학교 가상공학) ;
  • 이호길 (한국생산기술연구원 운동메카팀) ;
  • 김홍석 (한국생산기술연구원 제어지능팀) ;
  • 양광웅 (한국생산기술연구원 제어지능팀) ;
  • 원대희 (한국생산기술연구원 센서인식팀)
  • Published : 2006.01.01

Abstract

Localization is a essential technology for mobile robot to work well. Until now expensive sensors such as laser sensors have been used for mobile robot localization. We suggest RFID tag based localization system. RFID tag devices, antennas and tags are cheap and will be cheaper in the future. The RFID tag system is one of the most important elements in the ubiquitous system and RFID tag will be attached to all sorts of goods. Then, we can use this tags for mobile robot localization without additional costs. So, in this paper, the smart floor using passive RFID tags is proposed and, passive RFID tags are mainly used for identifying mobile robot's location and pose in the smart floor. We discuss a number of challenges related to this approach, such as tag distribution (density and structure), typing and clustering. When a mobile robot localizes in this smart floor, the localization error mainly results from the sensing range of the RFID reader, because the reader just ran know whether a tag is in the sensing range of the sensor. So, in this paper, we suggest two algorithms to reduce this error. We apply the particle filter based Monte Carlo localization algorithm to reduce the localization error. And with simulations and experiments, we show the possibility of our particle filter based Monte Carlo localization in the RFID tag based localization system.

Keywords

References

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Cited by

  1. A Hierarchical Algorithm for Indoor Mobile Robot Localization Using RFID Sensor Fusion vol.58, pp.6, 2011, https://doi.org/10.1109/TIE.2011.2109330