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Main Authors: Li, Mingyang, Lee, Brian, Zuo, Rui, Bacchus, Brent, Mudalige, Priyantha, Qiu, Qinru
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.11081
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author Li, Mingyang
Lee, Brian
Zuo, Rui
Bacchus, Brent
Mudalige, Priyantha
Qiu, Qinru
author_facet Li, Mingyang
Lee, Brian
Zuo, Rui
Bacchus, Brent
Mudalige, Priyantha
Qiu, Qinru
contents High-definition (HD) mapping tasks, which perform lane detections and predictions, are extremely challenging due to non-ideal conditions such as view occlusions, distant lane visibility, and adverse weather conditions. Those conditions often result in compromised lane detection accuracy and reduced reliability within autonomous driving systems. To address these challenges, we introduce MapATM, a novel deep neural network that effectively leverages historical actor trajectory information to improve lane detection accuracy, where actors refer to moving vehicles. By utilizing actor trajectories as structural priors for road geometry, MapATM achieves substantial performance enhancements, notably increasing AP by 4.6 for lane dividers and mAP by 2.6 on the challenging NuScenes dataset, representing relative improvements of 10.1% and 6.1%, respectively, compared to strong baseline methods. Extensive qualitative evaluations further demonstrate MapATM's capability to consistently maintain stable and robust map reconstruction across diverse and complex driving scenarios, underscoring its practical value for autonomous driving applications.
format Preprint
id arxiv_https___arxiv_org_abs_2604_11081
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle MapATM: Enhancing HD Map Construction through Actor Trajectory Modeling
Li, Mingyang
Lee, Brian
Zuo, Rui
Bacchus, Brent
Mudalige, Priyantha
Qiu, Qinru
Computer Vision and Pattern Recognition
High-definition (HD) mapping tasks, which perform lane detections and predictions, are extremely challenging due to non-ideal conditions such as view occlusions, distant lane visibility, and adverse weather conditions. Those conditions often result in compromised lane detection accuracy and reduced reliability within autonomous driving systems. To address these challenges, we introduce MapATM, a novel deep neural network that effectively leverages historical actor trajectory information to improve lane detection accuracy, where actors refer to moving vehicles. By utilizing actor trajectories as structural priors for road geometry, MapATM achieves substantial performance enhancements, notably increasing AP by 4.6 for lane dividers and mAP by 2.6 on the challenging NuScenes dataset, representing relative improvements of 10.1% and 6.1%, respectively, compared to strong baseline methods. Extensive qualitative evaluations further demonstrate MapATM's capability to consistently maintain stable and robust map reconstruction across diverse and complex driving scenarios, underscoring its practical value for autonomous driving applications.
title MapATM: Enhancing HD Map Construction through Actor Trajectory Modeling
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2604.11081