akharroubi/Rail3D
Rail3D: Multi-Context Point Cloud Dataset and New Approach for Railways Semantic Understanding
This project provides a unique collection of 3D point cloud data specifically for railway environments across multiple European countries. It takes raw LiDAR scans of railway tracks and infrastructure as input and offers categorized data where common railway features like rails, poles, wires, and ground are identified. Railway infrastructure managers, civil engineers, and maintenance planners would find this valuable for analyzing and managing rail networks.
No commits in the last 6 months.
Use this if you need a diverse and extensively labeled 3D point cloud dataset to train or test models for understanding and categorizing railway infrastructure.
Not ideal if you are looking for a ready-to-use software solution for real-time railway monitoring or require data outside of Europe.
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60
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10
Language
Python
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Last pushed
Jan 16, 2025
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