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Mobile Robot Hierarchical Simultaneous Localization and Mapping Using Monocular Vision 被引量:1

Mobile Robot Hierarchical Simultaneous Localization and Mapping Using Monocular Vision
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摘要 A hierarchical mobile robot simultaneous localization and mapping (SLAM) method that allows us to obtain accurate maps was presented. The local map level is composed of a set of local metric feature maps that are guaranteed to be statistically independent. The global level is a topological graph whose arcs are labeled with the relative location between local maps. An estimation of these relative locations is maintained with local map alignment algorithm, and more accurate estimation is calculated through a global minimization procedure using the loop closure constraint. The local map is built with Rao-Blackwellised particle filter (RBPF), where the particle filter is used to extending the path posterior by sampling new poses. The landmark position estimation and update is implemented through extended Kalman filter (EKF). Monocular vision mounted on the robot tracks the 3D natural point landmarks, which are structured with matching scale invariant feature transform (SIFT) feature pairs. The matching for multi-dimension SIFT features is implemented with a KD-tree in the time cost of O(lbN). Experiment results on Pioneer mobile robot in a real indoor environment show the superior performance of our proposed method. A hierarchical mobile robot simultaneous localization and mapping (SLAM) method that allows us to obtain accurate maps was presented. The local map level is composed of a set of local metric feature maps that are guaranteed to be statistically independent. The global level is a topological graph whose arcs are labeled with the relative location between local maps. An estimation of these relative locations is maintained with local map alignment algorithm, and more accurate estimation is calculated through a global minimization procedure using the loop closure constraint. The local map is built with Rao-Blackwellised particle filter (RBPF), where the particle filter is used to extending the path posterior by sampling new poses. The landmark position estimation and update is implemented through extended Kalman filter (EKF). Monocular vision mounted on the robot tracks the 3D natural point landmarks, which are structured with matching scale invariant feature transform (SIFT) feature pairs. The matching for multi-dimension SIFT features is implemented with a KD-tree in the time cost of O(lbN). Experiment results on Pioneer mobile robot in a real indoor environment show the superior performance of our proposed method.
出处 《Journal of Shanghai Jiaotong university(Science)》 EI 2007年第6期765-772,共8页 上海交通大学学报(英文版)
基金 The National High Technology Research and Development Program (863) of China (No2006AA04Z259) The National Natural Sci-ence Foundation of China (No60643005)
关键词 mobile robot HIERARCHICAL simultaneous localization and mapping (SLAM) Rao-Blackwellised particle filter (RBPF) MONOCULAR VISION scale INVARIANT feature TRANSFORM mobile robot hierarchical simultaneous localization and mapping (SLAM) Rao-Blackwellised particle filter (RBPF) monocular vision scale invariant feature transform
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参考文献8

  • 1Doucet A,de Freitas N,Gordon N.Sequential Monte Carlo methods in practice [ M ]. . 2001
  • 2Murphy K,Russell S.Rao-blackwellized particle fil- tering for dynamic bayesian networks. . 2001
  • 3Sim R,Elinas P,Griffin M, et al.Vision-based SLAM using the Rao-Blackwellized particle filter [ C ]. Workshop Reasoning with Uncertainty in Robotics . 2005
  • 4Se S,Lowe D,Little J.Vision-Based global local- ization and mapping for mobile robots. IEEE Transactions on Robotics . 2005
  • 5Lowe D G.Distinctive image features from scale-in- variant keypoints. Int J of Computer Vision . 2004
  • 6Smith R,Cheeseman P.On the representation and estimation of spatial uncertainty. Int Journal of Robotics Research . 1986
  • 7GUIVANT J,NEBOT E.Optimization of the simultaneous localization and map building algorithm for real time implementation. IEEE Transactions on Robotics and Automation . 2001
  • 8DASVISON J D,MURRAY W D.Simultaneous Localization and map- building using active vision. IEEE Transactions on Pattern Analysis and Machine Intelligence . 2002

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  • 1庄严,王伟,王珂,徐晓东.移动机器人基于激光测距和单目视觉的室内同时定位和地图构建[J].自动化学报,2005,31(6):925-933. 被引量:55
  • 2杨广林,孔令富,王洁.一种新的机器人手眼关系标定方法[J].机器人,2006,28(4):400-405. 被引量:33
  • 3THRUN S. Simultaneous localization and mapping [ J ]. Springer Tracts in Advanced Robotics and Cognitive Approaches to Spatial Mapping, 2008, 38:13- 41.
  • 4LEONARD J J, DURRANT-WHYTE H F, COX I J. Dynamic map building for an autonomous mobile robot[ J]. international Journal of Robotics Research, 1992, 11 (4):286-298.
  • 5RODRIGUEZ L D, MATIA F, GALAN R. Building geometric fealure based maps for indoor service robots [ J ]. Robotics and Autonomous Systems, 2006, 54(7) :546-558.
  • 6TOMATIS N, NOURBAKHSH I, SIEGWART R. Hybrid simultaneous localization and map building: a natural integration of topological and metric [ J]. Robotics and Autonomous System, 2003, 44 ( 1 ) :3-14.
  • 7WU Pei-liang, KONG Ling-fu, LI Xian-shan, et al. A hybrid algorithm combined color feature and keypoints for object detection [ C ]// Proc of the 3rd IEEE Conference on Industrial Electronics and Appli- cations. 2008 : 1408-1412.
  • 8LOWED G. Distinctive image features from scale-invariant keypoints[J].International Journal of Computer Vision, 2004, 60 (2) : 91-110.
  • 9RANGANATHAN P, HAYET J B, DEVY M, et al. Topological na vigation and qualitative localization for indoor environment using multisensory perception [ J ]. RObotics and Autonomous System, 2002, 41 (2-3) : 137-144.
  • 10HA Y G, SOHN J C, CHO Y J, et al. A robotic service framework supporting automated integration of ubiquitous sensors and devices [ J]. Information Sciences, 2007, 177 (3) :657-679.

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