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ClusterSLAM:A SLAM backend for simultaneous rigid body clustering and motion estimation 被引量:4

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摘要 We present a practical backend for stereo visual SLAM which can simultaneously discover individual rigid bodies and compute their motions in dynamic environments.While recent factor graph based state optimization algorithms have shown their ability to robustly solve SLAM problems by treating dynamic objects as outliers,their dynamic motions are rarely considered.In this paper,we exploit the consensus of 3 D motions for landmarks extracted from the same rigid body for clustering,and to identify static and dynamic objects in a unified manner.Specifically,our algorithm builds a noise-aware motion affinity matrix from landmarks,and uses agglomerative clustering to distinguish rigid bodies.Using decoupled factor graph optimization to revise their shapes and trajectories,we obtain an iterative scheme to update both cluster assignments and motion estimation reciprocally.Evaluations on both synthetic scenes and KITTI demonstrate the capability of our approach,and further experiments considering online efficiency also show the effectiveness of our method for simultaneously tracking ego-motion and multiple objects.
出处 《Computational Visual Media》 EI CSCD 2021年第1期87-101,共15页 计算可视媒体(英文版)
基金 supported by the National Key Technology R&D Program(Project No.2017YFB1002604) the Joint NSFC-DFG Research Program(Project No.61761136018) the National Natural Science Foundation of China(Project No.61521002)。
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