Non-Penetration Iterative Closest Points for Single-View Multi-Object 6D Pose Estimation

IEEE International Conference on Robotics and Automation(2022)

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摘要
This paper presents a novel iterative closest points (ICP) variant, non-penetration iterative closest points (NPICP), which prevents interpenetration in 6DOF pose optimization and/or joint optimization of multiple object poses. This capability is particularly advantageous in cluttered scenarios, where there are many interactions between objects that constrain the space of valid poses. We use a semi-infinite programming approach to handle non-penetration constraints between complex, non-convex 3D geometries. NPICP is applied to a common use case for ICP as a post-processing method to improve the pose estimation accuracy of a rough guess. The results show that NPICP outperforms ICP, assists in outlier detection, and also outperforms the best result on the IC-BIN dataset in the Benchmark for 6D Object Pose Estimation.
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关键词
ICP,nonpenetration iterative closest points,NPICP,multiple object poses,valid poses,nonpenetration constraints,nonconvex 3D geometries,pose estimation accuracy,6D Object Pose Estimation,single-view multiObject 6D Pose Estimation,closest points variant
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