Multimodal HD Mapping for Intersections by Intelligent Roadside Units
Chen, Zhongzhang, Fan, Miao, Xu, Shengtong, Yang, Mengmeng, Jiang, Kun, Liu, Xiangzeng, Xiong, Haoyi
–arXiv.org Artificial Intelligence
-- High-definition (HD) semantic mapping of complex intersections poses significant challenges for traditional vehicle-based approaches due to occlusions and limited perspectives. This paper introduces a novel camera-LiDAR fusion framework that leverages elevated intelligent roadside units (IRUs). Additionally, we present RS-seq, a comprehensive dataset developed through the systematic enhancement and annotation of the V2X-Seq dataset. RS-seq includes precisely labelled camera imagery and LiDAR point clouds collected from roadside installations, along with vectorized maps for seven intersections annotated with detailed features such as lane dividers, pedestrian crossings, and stop lines. The proposed fusion framework employs a two-stage process that integrates modality-specific feature extraction and cross-modal semantic integration, capitalizing on camera high-resolution texture and precise geometric data from LiDAR. Quantitative evaluations using the RS-seq dataset demonstrate that our multimodal approach consistently surpasses unimodal methods. Specifically, compared to unimodal baselines evaluated on the RS-seq dataset, the multimodal approach improves the mean Intersection-over-Union (mIoU) for semantic segmentation by 4% over the image-only results and 18% over the point cloud-only results. This study establishes a baseline methodology for IRU-based HD semantic mapping and provides a valuable dataset for future research in infrastructure-assisted autonomous driving systems. Semantic HD maps are essential for autonomous driving, as they provide precise road location details through semantic features such as lane dividers, stop lines, and pedestrian crossings.
arXiv.org Artificial Intelligence
Jul-15-2025
- Genre:
- Research Report > New Finding (0.46)
- Industry:
- Information Technology (1.00)
- Transportation > Ground
- Road (0.96)
- Technology: