Keyframe-Based RGB-D SLAM for Mobile Robots with Visual Odometry in Indoor Environments Using Graph Optimization
João Carlos Virgolino Soares, Marco Antônio Meggiolaro
- 发表年份
- 2018
- 引用次数
- 4
摘要
The SLAM problem is currently one of the most important topics in mobile robotics, due to the high number of applications that need its solution. This work proposes a methodology to perform SLAM in indoor environments with RGB-D data. The robot motion is estimated using FOVIS, a robust visual odometry system, and a graph-based probabilistic approach is used to minimize the errors caused by the drift in visual odometry. A keyframe selection approach is used to construct the graph and the g2o framework is used for the optimization. The proposed methodology is implemented as a Robot Operating System (ROS) package, and it is evaluated using benchmark datasets available in the literature. A comparison is made with state-of-the-art methods.
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