English

DA-LMR: A Robust Lane Marking Representation for Data Association

Robotics 2023-01-12 v2

Abstract

While complete localization approaches are widely studied in the literature, their data association and data representation subprocesses usually go unnoticed. However, both are a key part of the final pose estimation. In this work, we present DA-LMR (Delta-Angle Lane Marking Representation), a robust data representation in the context of localization approaches. We propose a representation of lane markings that encodes how a curve changes in each point and includes this information in an additional dimension, thus providing a more detailed geometric structure description of the data. We also propose DC-SAC (Distance-Compatible Sample Consensus), a data association method. This is a heuristic version of RANSAC that dramatically reduces the hypothesis space by distance compatibility restrictions. We compare the presented methods with some state-of-the-art data representation and data association approaches in different noisy scenarios. The DA-LMR and DC-SAC produce the most promising combination among those compared, reaching 98.1% in precision and 99.7% in recall for noisy data with 0.5 m of standard deviation.

Keywords

Cite

@article{arxiv.2111.09230,
  title  = {DA-LMR: A Robust Lane Marking Representation for Data Association},
  author = {Miguel Ángel Muñoz-Bañón and Jan-Hendrik Pauls and Haohao Hu and Christoph Stiller},
  journal= {arXiv preprint arXiv:2111.09230},
  year   = {2023}
}

Comments

Accepted ICRA 2022 (camera ready version)

R2 v1 2026-06-24T07:42:23.591Z