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Inland-LOAM: Voxel-Based Structural Semantic Mapping for Inland Waterways

Inland-LOAM: Voxel-Based Structural Semantic Mapping for Inland Waterways

来源:Arxiv_logoArxiv
英文摘要

Accurate geospatial information is crucial for safe, autonomous Inland Waterway Transport (IWT), as existing charts (IENC) lack real-time detail and conventional LiDAR SLAM fails in waterway environments. These challenges lead to vertical drift and non-semantic maps, hindering autonomous navigation. This paper introduces Inland-LOAM, a LiDAR SLAM framework for waterways. It uses an improved feature extraction and a water surface planar constraint to mitigate vertical drift. A novel pipeline transforms 3D point clouds into structured 2D semantic maps using voxel-based geometric analysis, enabling real-time computation of navigational parameters like bridge clearances. An automated module extracts shorelines and exports them into a lightweight, IENC-compatible format. Evaluations on a real-world dataset show Inland-LOAM achieves superior localization accuracy over state-of-the-art methods. The generated semantic maps and shorelines align with real-world conditions, providing reliable data for enhanced situational awareness. The code and dataset will be publicly available

Zhongbi Luo、Yunjia Wang、Jan Swevers、Peter Slaets、Herman Bruyninckx

水路运输工程

Zhongbi Luo,Yunjia Wang,Jan Swevers,Peter Slaets,Herman Bruyninckx.Inland-LOAM: Voxel-Based Structural Semantic Mapping for Inland Waterways[EB/OL].(2025-08-05)[2025-08-16].https://arxiv.org/abs/2508.03672.点此复制

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