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Autores principales: Xu, Ruilin, Song, Yuchen, Li, Kaijie, Gao, Xitong, Ye, Kejiang, Zhang, Fan, Zhao, Juanjuan
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2505.23123
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author Xu, Ruilin
Song, Yuchen
Li, Kaijie
Gao, Xitong
Ye, Kejiang
Zhang, Fan
Zhao, Juanjuan
author_facet Xu, Ruilin
Song, Yuchen
Li, Kaijie
Gao, Xitong
Ye, Kejiang
Zhang, Fan
Zhao, Juanjuan
contents Offline map matching involves aligning historical trajectories of mobile objects, which may have positional errors, with digital maps. This is essential for applications in intelligent transportation systems (ITS), such as route analysis and traffic pattern mining. Existing methods have two main limitations: (i) they assume a uniform Localization Error Distribution (LED) across urban areas, neglecting environmental factors that lead to suboptimal path search ranges, and (ii) they struggle to efficiently handle local non-shortest paths and detours. To address these issues, we propose a novel offline map matching method for sparse trajectories, called LNSP, which integrates LED modeling and non-shortest path detection. Key innovations include: (i) leveraging public transit trajectories with fixed routes to model LED in finer detail across different city regions, optimizing path search ranges, and (ii) scoring paths using sub-region dependency LED and a sliding window, which reduces global map matching errors. Experimental results using real-world bus and taxi trajectory datasets demonstrate that the LNSP algorithm significantly outperforms existing methods in both efficiency and matching accuracy.
format Preprint
id arxiv_https___arxiv_org_abs_2505_23123
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Offline Map Matching Based on Localization Error Distribution Modeling
Xu, Ruilin
Song, Yuchen
Li, Kaijie
Gao, Xitong
Ye, Kejiang
Zhang, Fan
Zhao, Juanjuan
Social and Information Networks
Offline map matching involves aligning historical trajectories of mobile objects, which may have positional errors, with digital maps. This is essential for applications in intelligent transportation systems (ITS), such as route analysis and traffic pattern mining. Existing methods have two main limitations: (i) they assume a uniform Localization Error Distribution (LED) across urban areas, neglecting environmental factors that lead to suboptimal path search ranges, and (ii) they struggle to efficiently handle local non-shortest paths and detours. To address these issues, we propose a novel offline map matching method for sparse trajectories, called LNSP, which integrates LED modeling and non-shortest path detection. Key innovations include: (i) leveraging public transit trajectories with fixed routes to model LED in finer detail across different city regions, optimizing path search ranges, and (ii) scoring paths using sub-region dependency LED and a sliding window, which reduces global map matching errors. Experimental results using real-world bus and taxi trajectory datasets demonstrate that the LNSP algorithm significantly outperforms existing methods in both efficiency and matching accuracy.
title Offline Map Matching Based on Localization Error Distribution Modeling
topic Social and Information Networks
url https://arxiv.org/abs/2505.23123