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SANDRO: a Robust Solver with a Splitting Strategy for Point Cloud Registration

10 March 2025
Michael Adlerstein
J. C. V. Soares
Angelo Bratta
Claudio Semini
    3DPC
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Abstract

Point cloud registration is a critical problem in computer vision and robotics, especially in the field of navigation. Current methods often fail when faced with high outlier rates or take a long time to converge to a suitable solution. In this work, we introduce a novel algorithm for point cloud registration called SANDRO (Splitting strategy for point cloud Alignment using Non-convex anD Robust Optimization), which combines an Iteratively Reweighted Least Squares (IRLS) framework with a robust loss function with graduated non-convexity. This approach is further enhanced by a splitting strategy designed to handle high outlier rates and skewed distributions of outliers. SANDRO is capable of addressing important limitations of existing methods, as in challenging scenarios where the presence of high outlier rates and point cloud symmetries significantly hinder convergence. SANDRO achieves superior performance in terms of success rate when compared to the state-of-the-art methods, demonstrating a 20% improvement from the current state of the art when tested on the Redwood real dataset and 60% improvement when tested on synthetic data.

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@article{adlerstein2025_2503.07743,
  title={ SANDRO: a Robust Solver with a Splitting Strategy for Point Cloud Registration },
  author={ Michael Adlerstein and João Carlos Virgolino Soares and Angelo Bratta and Claudio Semini },
  journal={arXiv preprint arXiv:2503.07743},
  year={ 2025 }
}
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