Design and analysis of a framework for real-time vision-based SLAM using Rao-Blackwellised particle filters

CRV '06 Proceedings of the The 3rd Canadian Conference on Computer and Robot Vision(2006)

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摘要
This paper addresses the problem of simultaneous localization and mapping (SLAM) using vision-based sensing. We present and analyse an implementation of a Rao- Blackwellised particle filter (RBPF) that uses stereo vision to localize a camera and 3D landmarks as the camera moves through an unknown environment. Our implementation is robust, can operate in real-time, and can operate without odometric or inertial measurements. Furthermore, our approach supports a 6-degree-of-freedom pose representation, vision-based ego-motion estimation, adaptive resampling, monocular operation, and a selection of odometry-based, observation-based, and mixture (combining local and global pose estimation) proposal distributions. This paper also examines the run-time behavior of efficiently designed RBPFs, providing an extensive empirical analysis of the memory and processing characteristics of RBPFs for vision-based SLAM. Finally, we present experimental results demonstrating the accuracy and efficiency of our approach.
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关键词
camera move,rao-blackwellised particle filter,extensive empirical analysis,vision-based slam,inertial measurement,blackwellised particle filter,monocular operation,adaptive resampling,processing characteristic,vision-based ego-motion estimation,real-time vision-based slam,data structures,motion estimation,computer vision,filtering,stereo vision,simultaneous localization and mapping,robustness,degree of freedom,particle filters,pose estimation
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