RGB-D SLAM with Structural Regularities

2021 IEEE INTERNATIONAL CONFERENCE ON ROBOTICS AND AUTOMATION (ICRA 2021)(2021)

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摘要
This work proposes a RGB-D SLAM system specifically designed for structured environments and aimed at improved tracking and mapping accuracy by relying on geometric features that are extracted from the surrounding. Structured environments offer, in addition to points, also an abundance of geometrical features such as lines and planes, which we exploit to design both the tracking and mapping components of our SLAM system. For the tracking part, we explore geometric relationships between these features based on the assumption of a Manhattan World (MW). We propose a decoupling-refinement method based on points, lines, and planes, as well as the use of Manhattan relationships in an additional pose refinement module. For the mapping part, different levels of maps from sparse to dense are reconstructed at a low computational cost. We propose an instance-wise meshing strategy to build a dense map by meshing plane instances independently. The overall performance in terms of pose estimation and reconstruction is evaluated on public benchmarks and shows improved performance compared to state-of-the-art methods. The code is released at https : // github . com/yanyan-li/PlanarSLAM.
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关键词
plane instances,RGB-D SLAM,structural regularities,SLAM system,structured environments,improved tracking,mapping accuracy,geometrical features,mapping components,tracking part,geometric relationships,Manhattan World,decoupling-refinement method,Manhattan relationships,additional pose refinement module,mapping part,low computational cost,instance-wise meshing strategy,dense map,pose estimation
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