Exploring Semi-Supervised Learning for Online Mapping
Paper in proceeding, 2025

The ability to generate online maps using only onboard sensory information is crucial for enabling autonomous driving beyond well-mapped areas. Training models for this task - predicting lane markers, road edges, and pedestrian crossings - traditionally require extensive labelled data, which is expensive and labour-intensive to obtain. While semi-supervised learning (SSL) has shown promise in other domains, its potential for online mapping remains largely underexplored. In this work, we bridge this gap by demonstrating the effectiveness of SSL methods for online mapping. Furthermore, we introduce a simple yet effective method leveraging the inherent properties of online mapping by fusing the teacher's pseudo-labels from multiple samples, enhancing the reliability of self-supervised training. If 10% of the data has labels, our method to leverage unlabelled data achieves a 3.5 x performance boost compared to only using the labelled data. This narrows the gap to a fully supervised model, using all labels, to just 3.5 mIoU. We also show strong generalization to unseen cities. Specifically, in Argoverse 2, when adapting to Pittsburgh, incorporating purely unlabelled target-domain data reduces the performance gap from 5 to 0.5 mIoU. These results highlight the potential of SSL as a powerful tool for solving the online mapping problem, significantly reducing reliance on labelled data.

self-supervised learning

online mapping

autonomous driving

Author

Adam Lilja

Zenseact AB

Chalmers, Electrical Engineering, Signal Processing and Biomedical Engineering

Erik Karl Wallstén Wallin

Saab

Chalmers, Physics, Theoretical Physics

Junsheng Fu

Zenseact AB

Lars Hammarstrand

Chalmers, Electrical Engineering, Signal Processing and Biomedical Engineering

IEEE Computer Society Conference on Computer Vision and Pattern Recognition Workshops

21607508 (ISSN) 21607516 (eISSN)

2468-2478
9798331599942 (ISBN)

2025 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops, CVPRW 2025
Nashville, USA,

Subject Categories (SSIF 2025)

Computer graphics and computer vision

Other Computer and Information Science

Infrastructure

Chalmers e-Commons (incl. C3SE, 2020-)

DOI

10.1109/CVPRW67362.2025.00233

More information

Latest update

10/13/2025