arXiv Open Access 2025

PseudoMapTrainer: Learning Online Mapping without HD Maps

Christian Löwens Thorben Funke Jingchao Xie Alexandru Paul Condurache
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Abstrak

Online mapping models show remarkable results in predicting vectorized maps from multi-view camera images only. However, all existing approaches still rely on ground-truth high-definition maps during training, which are expensive to obtain and often not geographically diverse enough for reliable generalization. In this work, we propose PseudoMapTrainer, a novel approach to online mapping that uses pseudo-labels generated from unlabeled sensor data. We derive those pseudo-labels by reconstructing the road surface from multi-camera imagery using Gaussian splatting and semantics of a pre-trained 2D segmentation network. In addition, we introduce a mask-aware assignment algorithm and loss function to handle partially masked pseudo-labels, allowing for the first time the training of online mapping models without any ground-truth maps. Furthermore, our pseudo-labels can be effectively used to pre-train an online model in a semi-supervised manner to leverage large-scale unlabeled crowdsourced data. The code is available at github.com/boschresearch/PseudoMapTrainer.

Topik & Kata Kunci

Penulis (4)

C

Christian Löwens

T

Thorben Funke

J

Jingchao Xie

A

Alexandru Paul Condurache

Format Sitasi

Löwens, C., Funke, T., Xie, J., Condurache, A.P. (2025). PseudoMapTrainer: Learning Online Mapping without HD Maps. https://arxiv.org/abs/2508.18788

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Tahun Terbit
2025
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en
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arXiv
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