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Main Authors: Shan, Hao, Li, Ruikai, Jiang, Han, Fan, Yizhe, Yan, Ziyang, Li, Bohan, Hao, Xiaoshuai, Zhao, Hao, Cui, Zhiyong, Ren, Yilong, Yu, Haiyang
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.10660
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author Shan, Hao
Li, Ruikai
Jiang, Han
Fan, Yizhe
Yan, Ziyang
Li, Bohan
Hao, Xiaoshuai
Zhao, Hao
Cui, Zhiyong
Ren, Yilong
Yu, Haiyang
author_facet Shan, Hao
Li, Ruikai
Jiang, Han
Fan, Yizhe
Yan, Ziyang
Li, Bohan
Hao, Xiaoshuai
Zhao, Hao
Cui, Zhiyong
Ren, Yilong
Yu, Haiyang
contents As one of the fundamental modules in autonomous driving, online high-definition (HD) maps have attracted significant attention due to their cost-effectiveness and real-time capabilities. Since vehicles always cruise in highly dynamic environments, spatial displacement of onboard sensors inevitably causes shifts in real-time HD mapping results, and such instability poses fundamental challenges for downstream tasks. However, existing online map construction models tend to prioritize improving each frame's mapping accuracy, while the mapping stability has not yet been systematically studied. To fill this gap, this paper presents the first comprehensive benchmark for evaluating the temporal stability of online HD mapping models. We propose a multi-dimensional stability evaluation framework with novel metrics for Presence, Localization, and Shape Stability, integrated into a unified mean Average Stability (mAS) score. Extensive experiments on 42 models and variants show that accuracy (mAP) and stability (mAS) represent largely independent performance dimensions. We further analyze the impact of key model design choices on both criteria, identifying architectural and training factors that contribute to high accuracy, high stability, or both. To encourage broader focus on stability, we will release a public benchmark. Our work highlights the importance of treating temporal stability as a core evaluation criterion alongside accuracy, advancing the development of more reliable autonomous driving systems. The benchmark toolkit, code, and models will be available at https://stablehdmap.github.io/.
format Preprint
id arxiv_https___arxiv_org_abs_2510_10660
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Stability Under Scrutiny: Benchmarking Representation Paradigms for Online HD Mapping
Shan, Hao
Li, Ruikai
Jiang, Han
Fan, Yizhe
Yan, Ziyang
Li, Bohan
Hao, Xiaoshuai
Zhao, Hao
Cui, Zhiyong
Ren, Yilong
Yu, Haiyang
Computer Vision and Pattern Recognition
As one of the fundamental modules in autonomous driving, online high-definition (HD) maps have attracted significant attention due to their cost-effectiveness and real-time capabilities. Since vehicles always cruise in highly dynamic environments, spatial displacement of onboard sensors inevitably causes shifts in real-time HD mapping results, and such instability poses fundamental challenges for downstream tasks. However, existing online map construction models tend to prioritize improving each frame's mapping accuracy, while the mapping stability has not yet been systematically studied. To fill this gap, this paper presents the first comprehensive benchmark for evaluating the temporal stability of online HD mapping models. We propose a multi-dimensional stability evaluation framework with novel metrics for Presence, Localization, and Shape Stability, integrated into a unified mean Average Stability (mAS) score. Extensive experiments on 42 models and variants show that accuracy (mAP) and stability (mAS) represent largely independent performance dimensions. We further analyze the impact of key model design choices on both criteria, identifying architectural and training factors that contribute to high accuracy, high stability, or both. To encourage broader focus on stability, we will release a public benchmark. Our work highlights the importance of treating temporal stability as a core evaluation criterion alongside accuracy, advancing the development of more reliable autonomous driving systems. The benchmark toolkit, code, and models will be available at https://stablehdmap.github.io/.
title Stability Under Scrutiny: Benchmarking Representation Paradigms for Online HD Mapping
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2510.10660