ArXiv TLDR

Graph Theoretical Outlier Rejection for 4D Radar Registration in Feature-Poor Environments

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2604.14857

Georg Dorndorf, Daniel Adolfsson, Masrur Doostdar

cs.RO

TLDR

A new graph-based outlier rejection method improves 4D radar registration accuracy in feature-poor environments by integrating PCM into ICP.

Key contributions

  • Integrates graph-based Pairwise Consistency Maximization (PCM) for outlier rejection within the ICP loop.
  • Proposes a radar-adapted, uncertainty-aware scoring function for PCM, using anisotropic per-detection uncertainty.
  • Employs a greedy heuristic to approximate consistency maximization, making the method suitable for online use.
  • Achieves up to 55% reduction in relative position error (RPE) on 100m segments over GICP baseline.

Why it matters

4D radar registration is vital for autonomous systems in harsh conditions but struggles with noise and sparsity. This method significantly boosts robustness and accuracy in challenging, feature-poor environments like mines. Its online usability makes it valuable for real-world localization pipelines, enhancing safety and autonomy.

Original Abstract

Automotive 4D imaging radar is well suited for operation in dusty and low-visibility environments, but scan registration remains challenging due to scan sparsity and spurious detections caused by noise and multipath reflections. This difficulty is compounded in feature-poor open-pit mines, where the lack of distinctive landmarks reduces correspondence reliability. We integrate graph-based pairwise consistency maximization (PCM) as an outlier rejection step within the iterative closest points (ICP) loop. We propose a radar-adapted pairwise distance-invariant scoring function for graph-based (PCM) that incorporates anisotropic, per-detection uncertainty derived from a radar measurement model. The consistency maximization problem is approximated with a greedy heuristic that finds a large clique in the pairwise consistency graph. The refined correspondence set improves robustness when the initial association set is heavily contaminated. We evaluate a standard Euclidean distance residual and our uncertainty-aware residual on an open-pit mine dataset collected with a 4D imaging radar. Compared to the generalized ICP (GICP) baseline without PCM, our method reduces segment relative position error (RPE) by 29.6% on 1 m segments and by up to 55% on 100 m segments. The presented method is intended for integration into localization pipelines and is suitable for online use due to the greedy heuristic in graph-based (PCM).

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