A pose graph based visual SLAM algorithm for robot pose estimation

World Automation Congress(2014)

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摘要
This paper presents a pose graph based visual SLAM (Simultaneous Localization and Mapping) method for 6-DOF robot pose estimation. The method uses a fast ICP (Iterative Closest Point) algorithm to enhance a visual odometry for estimating the pose change of a 3D camera in a feature-sparse environment. It then constructs a graph using the pose changes computed by the improved visual odometry and employ a pose optimization process to obtain the optimal estimates of the camera poses. The proposed method is compared with an Extended Kalman Filter (EKF) based pose estimation method in both feature-rich environments and feature-sparse environments. The experimental results show that the graph based SLAM method has a more consistent performance than the EKF based method in visual feature-rich environments and it outperforms the EKF counterpart in feature-sparse environments.
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关键词
kalman filters,slam (robots),iterative methods,mobile robots,pose estimation,robot vision,extended kalman filter,fast icp algorithm,feature-rich environment,feature-sparse environment,iterative closest point algorithm,pose graph based visual slam algorithm,pose optimization process,robot pose estimation,simultaneous localization and planning,visual odometry
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