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Main Authors: Cheng, Daqian, Ding, Xuchu, Wu, Yujia, Zhang, Xiang, Wang, Lei
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.22040
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author Cheng, Daqian
Ding, Xuchu
Wu, Yujia
Zhang, Xiang
Wang, Lei
author_facet Cheng, Daqian
Ding, Xuchu
Wu, Yujia
Zhang, Xiang
Wang, Lei
contents Localization for autonomous vehicles on highways remains under-explored compared to urban roads, and state-of-the-art methods for urban scenes degrade when directly applied to highways. We identify key challenges including environment changes under information homogeneity, heavy occlusion, degraded GNSS signals, and stringent downstream requirements on accuracy and latency. We propose a robust localization system to address highway challenges, which uses a dual-likelihood LiDAR front end that decouples 3D geometric structures and 2D road-texture cues to handle environment changes; a Control-EKF further leverages steering and acceleration commands to reduce lag and improve closed-loop behavior. An automated offline mapping and ground-truth pipeline keep maps fresh at high cadence for optimal localization performance. To catalyze progress, we release a public dataset covering both urban roads and highways while focusing on representative challenging highway clips, totaling 163 km; benchmarking is standardized using product-oriented accuracy metrics and certified ground truth. Compared to Apollo and Autoware, our system performs similarly on urban roads but shows superior robustness on challenging highway scenarios. The system has been validated by more than one million kilometers of road testing.
format Preprint
id arxiv_https___arxiv_org_abs_2604_22040
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Robust Localization for Autonomous Vehicles in Highway Scenes
Cheng, Daqian
Ding, Xuchu
Wu, Yujia
Zhang, Xiang
Wang, Lei
Robotics
Localization for autonomous vehicles on highways remains under-explored compared to urban roads, and state-of-the-art methods for urban scenes degrade when directly applied to highways. We identify key challenges including environment changes under information homogeneity, heavy occlusion, degraded GNSS signals, and stringent downstream requirements on accuracy and latency. We propose a robust localization system to address highway challenges, which uses a dual-likelihood LiDAR front end that decouples 3D geometric structures and 2D road-texture cues to handle environment changes; a Control-EKF further leverages steering and acceleration commands to reduce lag and improve closed-loop behavior. An automated offline mapping and ground-truth pipeline keep maps fresh at high cadence for optimal localization performance. To catalyze progress, we release a public dataset covering both urban roads and highways while focusing on representative challenging highway clips, totaling 163 km; benchmarking is standardized using product-oriented accuracy metrics and certified ground truth. Compared to Apollo and Autoware, our system performs similarly on urban roads but shows superior robustness on challenging highway scenarios. The system has been validated by more than one million kilometers of road testing.
title Robust Localization for Autonomous Vehicles in Highway Scenes
topic Robotics
url https://arxiv.org/abs/2604.22040