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GMCR: Graph-based Maximum Consensus Estimation for Point Cloud Registration

Robotics 2023-09-29 v2

Abstract

Point cloud registration is a fundamental and challenging problem for autonomous robots interacting in unstructured environments for applications such as object pose estimation, simultaneous localization and mapping, robot-sensor calibration, and so on. In global correspondence-based point cloud registration, data association is a highly brittle task and commonly produces high amounts of outliers. Failure to reject outliers can lead to errors propagating to downstream perception tasks. Maximum Consensus (MC) is a widely used technique for robust estimation, which is however known to be NP-hard. Exact methods struggle to scale to realistic problem instances, whereas high outlier rates are challenging for approximate methods. To this end, we propose Graph-based Maximum Consensus Registration (GMCR), which is highly robust to outliers and scales to realistic problem instances. We propose novel consensus functions to map the decoupled MC-objective to the graph domain, wherein we find a tight approximation to the maximum consensus set as the maximum clique. The final pose estimate is given in closed-form. We extensively evaluated our proposed GMCR on a synthetic registration benchmark, robotic object localization task, and additionally on a scan matching benchmark. Our proposed method shows high accuracy and time efficiency compared to other state-of-the-art MC methods and compares favorably to other robust registration methods.

Keywords

Cite

@article{arxiv.2303.04032,
  title  = {GMCR: Graph-based Maximum Consensus Estimation for Point Cloud Registration},
  author = {Michael Gentner and Prajval Kumar Murali and Mohsen Kaboli},
  journal= {arXiv preprint arXiv:2303.04032},
  year   = {2023}
}

Comments

Accepted at icra 2023